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JP4830765B2 - Activity measurement system - Google Patents
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JP4830765B2 - Activity measurement system - Google Patents

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JP4830765B2
JP4830765B2 JP2006269492A JP2006269492A JP4830765B2 JP 4830765 B2 JP4830765 B2 JP 4830765B2 JP 2006269492 A JP2006269492 A JP 2006269492A JP 2006269492 A JP2006269492 A JP 2006269492A JP 4830765 B2 JP4830765 B2 JP 4830765B2
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action
exercise intensity
data
behavior
reference value
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JP2008086479A (en
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吉浩 松村
健司 西野
裕 山中
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Panasonic Corp
Panasonic Electric Works Co Ltd
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Matsushita Electric Works Ltd
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Description

本発明は、活動量計測システムに関するものである。   The present invention relates to an activity amount measurement system.

従来、例えば歩数等から消費エネルギを予測することにより、健康管理を目的とするものや、加速度及び角加速度センサの情報を用いて人体の行動を分類することにより、消費エネルギを算出する運動測定装置(例えば特許文献1に開示)が提供されている。
特開2002−263086号公報(段落0017〜0020)
Conventionally, an exercise measuring device that calculates energy consumption by predicting energy consumption from the number of steps, for example, for health management purposes, or by classifying human actions using information from acceleration and angular acceleration sensors (For example, disclosed in Patent Document 1).
JP 2002-263086 A (paragraphs 0017 to 0020)

ところで、上述の歩数等から消費エネルギを予測することにより、健康管理を目的とするものでは、歩行状態データを蓄積するようにはなっていなかった。   By the way, by predicting energy consumption from the number of steps as described above, for the purpose of health management, walking state data has not been accumulated.

また、特許文献1に開示されている運動測定装置では、歩数のみを用いて消費エネルギを算出するために、歩行時も走行時も同じ歩数であれば算出される消費エネルギは同じ値となってしまうという問題があった。かように歩行や、走行など行動の類別と運動強度との関係を被測定者に提示することができなかった。   Further, in the exercise measuring device disclosed in Patent Document 1, since the energy consumption is calculated using only the number of steps, the calculated energy consumption is the same value if the number of steps is the same during walking and running. There was a problem that. Thus, it was impossible to present to the measurement subject the relationship between the classification of behavior such as walking and running and the exercise intensity.

本発明は、上述の点に鑑みて為されたもので、その目的とするところは、測定装置で得られた測定データから被測定者の行動を類別と、その行動における運動強度の代表値を求めることができ、その結果被測定者に生活習慣の改善を図るために役立つ行動情報を提示することが可能な活動量計測システムを提供することにある。 The present invention has been made in view of the above points, and the object of the present invention is to classify the actions of the person to be measured from the measurement data obtained by the measuring apparatus and to obtain representative values of exercise intensity in the actions. It is an object of the present invention to provide an activity amount measuring system that can be obtained and, as a result, can present behavior information useful for improving a lifestyle habit to a measurement subject.

上述の目的を達成するために、請求項1の発明では、被測定者の運動強度を測定する測定手段、及び、前記測定手段よって測定された前記運動強度の測定データを、時刻データを発生する時刻発生部から取得した時刻データに対応付けて逐次記憶する記憶手段を有する測定装置と、前記測定装置から前記運動強度の測定データを前記時刻データとともに通信により取得し、所定時間の時間枠が複数連続してできる窓枠単位で被測定者の行動を類別する行動類別手段を有し、前記行動類別手段によって類別された行動毎に各行動における運動強度の平均値を算出するデータ処理装置とを備え、前記行動類別手段は、類別対象とする各行動を特徴付ける運動強度の代表値を基準値として、各時間枠に対応付けて前記基準値を記憶し、各時間枠において前記運動強度の測定データから求めた代表値と前記基準値とを比較することによって、前記窓枠単位で被測定者の行動を類別することを特徴とする。 To achieve the above object, the invention of claim 1, measuring means for measuring the exercise intensity of the subject, and the measurement data of said measuring means thus measured the exercise intensity, generates time data a measuring device having a storage means for storing sequentially in association with the time data obtained from the time generator, the measuring device from Tokushi retriever by the measurement data of the exercise intensity in communication with said time data, the predetermined time period Data processing for calculating an average value of exercise intensity in each action for each action classified by the action classification means, having action classification means for classifying the actions of the person being measured in units of window frames formed by a plurality of continuous frames and a device, the action classification means, as a reference value a representative value of exercise intensity characterizing each action to the classification target, and storing the reference value in association with each time frame, you each time frame Wherein by comparing the representative values obtained from the measured data of the exercise intensity and with said reference value, and wherein the categorizing behavior of the subject in the window frame units Te.

請求項1の発明によれば、測定装置で得られた測定データから被測定者の行動を類別するとともに、類別された行動毎に各行動における運動強度の平均値を求めることができ、それにより各行動における運動強度の平均値が生活習慣の改善を図るのに必要な目標値等に達しているか否かなどの判断材料を提示することができる。 According to the present invention, as well as grading the behavior of the subject from the measurement data obtained by the measuring device, it is possible to obtain the average value of the definitive exercise intensity on each action for each are categorized behavior, it decisions such as optionally for determining whether reached the required target value, etc. to an average value of the definitive exercise intensity on each line movement is improve the lifestyle can be presented by.

請求項2の発明では、請求項1の発明において、前記行動類別手段は、各時間枠において前記運動強度の測定データから求めた代表値と各行動に対応した前記基準値との残差が全て所定範囲内である場合に、前記窓枠単位で被測定者の行動を類別することを特徴とする。 According to a second aspect of the present invention, in the first aspect of the invention, the behavior classification means is configured such that all residuals between the representative value obtained from the measurement data of the exercise intensity and the reference value corresponding to each behavior are obtained in each time frame. When it is within the predetermined range, the actions of the person to be measured are classified by the window frame unit .

請求項2の発明によれば、行動の類別を、測定データから求めた運動強度の代表値と、予め記憶してある基準値と比較するだけで、簡単に抽出することができる。   According to the second aspect of the present invention, it is possible to easily extract the classification of the action simply by comparing the representative value of the exercise intensity obtained from the measurement data with the reference value stored in advance.

請求項3の発明では、請求項1又は2の発明において、前記データ処理装置は、行動毎に算出した前記運動強度の平均値を、予め登録されている運動目標基準値と比較し、行動毎に前記運動目標基準値に達しているか否かを判断し、判断結果を表示部に表示させることを特徴とする。 In the invention of claim 3, in the invention of claim 1 or 2, the data processing device compares the average value of the exercise intensity calculated for each action with a pre-registered exercise target reference value, for each action. It is determined whether or not the exercise target reference value has been reached, and the determination result is displayed on the display unit .

請求項3の発明によれば、行動毎に運動目標基準値に達しているか否かを判断した判断結果を表示部に表示させることができる。 According to invention of Claim 3, the judgment result which judged whether it reached | attained the exercise | movement target reference value for every action can be displayed on a display part .

請求項4の発明では、請求項1の発明において、前記行動類別手段は、前記運動強度の測定データをクラスター分析した結果と前記基準値に対してクラスター分析を行った結果との類似性の比較から行動の類別を抽出することを特徴とする。 In the invention of claim 4, in the invention of claim 1, wherein the action classification means, said the results of measurement data of exercise intensity was cluster analysis, similarity with the result cluster analysis was Tsu line with respect to the reference value It is characterized in that the classification of behavior is extracted from the comparison.

請求項4の発明によれば、クラスター分析によって、行動の類別の抽出が行え、測定データの代表値の算出などを必要としない。   According to the invention of claim 4, behavior classification can be extracted by cluster analysis, and calculation of a representative value of measurement data is not required.

請求項5の発明では、請求項乃至4の何れかの発明において、前記データ処理装置は、前記被測定者の社会的な個人特性に関連付けられたカレンダーを作成して、該カレンダーデータに基づき、類別する行動の基準となる代表値を設定する手段を備え、前記行動類別手段は、設定された該代表値を行動の類別抽出に用いる前記基準値とすることを特徴とする。 In the invention of claim 5, in any one of the claims 1 to 4, wherein the data processing device before SL to create a calendar associated with a social personal characteristics of the subject, to the calendar data And a means for setting a representative value as a reference for the action to be classified. The action classification means uses the set representative value as the reference value used for action classification extraction.

請求項の発明によれば、カレンダーに反映させた社会的な個人特性から被測定者がとりえない行動など類別対象外の行動によるノイズを除去することができ、行動の抽出精度を向上させることができる。 According to the invention of claim 5 , it is possible to remove noise caused by actions that are not classified, such as actions that the subject cannot take, from the social personal characteristics reflected in the calendar, thereby improving the accuracy of action extraction. be able to.

本発明は、測定装置で得られた測定データから被測定者の行動を類別するとともに、類別された行動毎に各行動における運動強度の平均値を求めることができ、それにより各行動における運動強度の平均値が生活習慣の改善を図るのに必要な目標値等に達しているか否かなどの判断材料を提示することができるという効果がある。 The present invention is to categorize the behavior of the subject from the measurement data obtained by the measuring device, it is possible to obtain the average value of the definitive exercise intensity on each action for each are categorized behavior, thereby definitive each row dynamic there is an effect that decisions such as whether they Luke not reached the required target value, etc. to an average value of improving the lifestyle of exercise intensity can be presented.

以下本発明を一実施形態により説明する。   The present invention will be described below with reference to an embodiment.

図1は本発明の活動量計測システムの一実施形態を示し、本実施形態は図示するように被測定者の歩数及び運動強度を測定するための測定装置1と、この測定装置1との間でデータの授受を行い、測定装置1で測定した歩数、運動強度の測定データに基づいて運動強度(或いは歩数)の代表値の算出等の演算処理を行うデータ処理装置2とで構成される。   FIG. 1 shows an embodiment of an activity amount measuring system according to the present invention. In this embodiment, as shown in the figure, a measuring apparatus 1 for measuring the number of steps and exercise intensity of a person to be measured and the measuring apparatus 1 are shown. And a data processing device 2 that performs arithmetic processing such as calculation of a representative value of exercise intensity (or number of steps) based on measurement data of the number of steps and exercise intensity measured by the measuring device 1.

測定装置1は、被測定者が携行できる大きさに形成された本体(図示せず)に、被測定者の動きに応じて加速度を検出する加速度センサ10、測定装置1での信号処理や制御のためのCPUからなる演算処理部11、読み書き自在なメモリ部12a、12b、歩数等の測定データを表示するための表示部13、データ処理装置2との間でデータ授受を行うために設けた例えばUSB(Universal Serial Bus)等の汎用の通信部14と、時刻発生部15と、測定装置1の動作電源を得るための二次電池や一次電池からなる電池電源(図示せず)等を備えている。   The measuring device 1 includes a body (not shown) formed in a size that can be carried by the measurement subject, an acceleration sensor 10 that detects acceleration according to the movement of the measurement subject, and signal processing and control in the measurement device 1. Is provided to exchange data with the arithmetic processing unit 11 comprising a CPU, a readable / writable memory unit 12a, 12b, a display unit 13 for displaying measurement data such as the number of steps, and the data processing device 2. For example, a general-purpose communication unit 14 such as a USB (Universal Serial Bus), a time generation unit 15, a secondary battery for obtaining an operating power source of the measuring device 1, a battery power source (not shown) including a primary battery, and the like are provided. ing.

演算処理部11は、加速度センサ10が検出する例えば上下方向の加速度から歩数をカウントし、また加速度の大きさから運動強度を算出する歩数・強度算出機能を備え、この機能と加速度センサ10とで測定手段を構成する。また演算処理部11にはメモリ部12a、12bに対する読み書きの制御、通信部14の送受信の制御、表示部13の制御の機能を備えている。   The arithmetic processing unit 11 includes a step count / intensity calculation function that counts the number of steps from, for example, vertical acceleration detected by the acceleration sensor 10 and calculates exercise intensity from the magnitude of the acceleration. Configure the measuring means. In addition, the arithmetic processing unit 11 has functions of reading / writing with respect to the memory units 12a and 12b, transmission / reception control of the communication unit 14, and control of the display unit 13.

データ処理装置2は、例えば、活動量計測システムのデータ処理に対応したアプリケーションソフトを実行する汎用のパーソナルコンピュータによって構成されるもので、パーソナルコンピュータとして備えている外部記憶装置20、USB等の通信部21、演算処理部22,入力部23、ディスプレイ装置からなる表示部24を利用しており、外部記憶装置20には活動量計測システムとして必要な個人特性データ(被測定者の身長、体重、性別、年齢、職業等、個人ID、使用する機器ID)、更に被測定者の行動を類別抽出するために必要な類別対象としている各行動の運動強度(或いは歩数)の代表値、例えば平均値、標準偏差、最大強度(最大歩数)、最小強度(最小歩数)、最大強度(最大歩数)と最小強度(最小歩数)との差、継続する時間の幅などにより行動の波形を特徴付けるパラメータを基準値として記憶している。尚行動が継続する時間幅は行動により異なるため、例えば5分を最小単位として2時間までの5分単位の時間枠で上述の代表値を記憶している。   The data processing device 2 is constituted by, for example, a general-purpose personal computer that executes application software corresponding to the data processing of the activity amount measurement system. The data processing device 2 includes a communication unit such as an external storage device 20 and a USB provided as the personal computer. 21, an arithmetic processing unit 22, an input unit 23, and a display unit 24 including a display device are used, and the external storage device 20 has personal characteristic data (height, weight, gender of the person to be measured) necessary as an activity amount measurement system. Age, occupation, personal ID, device ID to be used), and representative values of exercise intensity (or number of steps) of each action that is necessary for classifying the actions of the person being measured, for example, an average value, Standard deviation, maximum strength (maximum steps), minimum strength (minimum steps), difference between maximum strength (maximum steps) and minimum strength (minimum steps) The parameters characterizing the waveforms of action due time width of continuing stored as a reference value. Since the time duration during which the action continues varies depending on the action, for example, the above representative value is stored in a time frame of 5 minutes up to 2 hours with 5 minutes as a minimum unit.

図2は類別する行動の波形例を示し、(a)は卓球・テニスのような行動の運動強度の変化波形、(b)は買物のような行動の運動強度の変化波形、(c)はウォーキングのような行動の運動強度の変化波形を示し、図中縦軸は運動強度の大きさを、横軸は時間を夫々示す。   FIG. 2 shows examples of waveforms of actions to be classified, (a) is a change waveform of exercise intensity of an action like table tennis / tennis, (b) is a change waveform of exercise intensity of an action like shopping, (c) is The change waveform of the exercise intensity of the action such as walking is shown. In the figure, the vertical axis indicates the magnitude of the exercise intensity, and the horizontal axis indicates the time.

次に本実施形態の活動量計測システムについて説明する。   Next, the activity amount measurement system of this embodiment will be described.

まず、被測定者が携行する測定装置1のメモリ部12bには、データ処理装置2でデータベースDBに登録されている当該被測定者に対応した個人ID、機器IDの各データをデータ処理装置2から通信部14を用いた通信により取得して格納しているものとする。また歩数や、運動強度の算出に必要な演算用係数もメモリ部12bに格納しているものとする。   First, in the memory unit 12b of the measuring device 1 carried by the measurement subject, the data processing device 2 stores the individual ID and device ID data corresponding to the measurement subject registered in the database DB by the data processing device 2. Are acquired and stored by communication using the communication unit 14. Further, it is assumed that calculation coefficients necessary for calculating the number of steps and the exercise intensity are also stored in the memory unit 12b.

このように被測定者は、一日の内の行動期間(活動期間)中、当該測定装置1を装着携行して行動する。これにより被測定者の動きに応じた加速度が加速度センサ10により検出され、その加速度データに基づいて演算処理部11は歩数と運動強度を算出し、その算出した結果を夫々の測定データとしてメモリ部12aに逐次保存するとともに、時刻発生部15から取得する時刻データに測定データを対応付けた時刻暦データをメモリ部12aに記憶させる。このようにして被測定者の行動に伴う歩数や運動強度のデータが時刻暦データとともに、メモリ部12aに蓄積されることになる。   In this way, the person to be measured acts while wearing the measurement apparatus 1 during the action period (activity period) of the day. As a result, acceleration corresponding to the movement of the measurement subject is detected by the acceleration sensor 10, and the arithmetic processing unit 11 calculates the number of steps and the exercise intensity based on the acceleration data, and the calculated results are stored in the memory unit as respective measurement data. The time calendar data in which the measurement data is associated with the time data acquired from the time generation unit 15 is stored in the memory unit 12a. In this way, the number of steps and exercise intensity data accompanying the measurement subject's action are stored in the memory unit 12a together with the time calendar data.

そして、例えば一日の行動が終了した時点で、被測定者は、測定装置1の通信部14をデータ処理装置2の通信部21に通信ケーブル(図示せず)により接続して、演算処理部11及びデータ処理装置2の演算処理部22の制御下で通信を行わせることで、メモリ部12aに記憶されている時刻暦データ及び測定データを個人ID及び機器IDのデータとともにデータ処理装置2に転送させる。   Then, for example, when the action of one day is finished, the person to be measured connects the communication unit 14 of the measuring device 1 to the communication unit 21 of the data processing device 2 by a communication cable (not shown), and the arithmetic processing unit 11 and the communication processing under the control of the arithmetic processing unit 22 of the data processing device 2, the time calendar data and the measurement data stored in the memory unit 12a are transmitted to the data processing device 2 together with the personal ID and the device ID data. Let it be transferred.

データ処理装置2では、演算処理部22の制御下で、測定装置1から送られてきた個人ID及び機器IDの認証を行い、この認証後、通信により取得した時刻暦データ及び測定データを当該個人IDに対応する被測定者のデータとしてデータベースDB保存する処理を行う。 In the data processing device 2, under the control of the arithmetic processing unit 22, the personal ID and the device ID sent from the measuring device 1 are authenticated, and after this authentication, the time calendar data and measurement data obtained by communication are used as the personal information. A process of storing in the database DB as data of the measurement subject corresponding to the ID is performed.

また演算処理部22の制御下で、例えば表示部24にはデータ処理のための操作画面が表示されており、被測定者は、表示部24表示された操作画面に基づいて入力部23を操作し、演算指示を行う。 In addition, under the control of the arithmetic processing unit 22, for example, an operation screen for data processing is displayed on the display unit 24 , and the measured person moves the input unit 23 based on the operation screen displayed on the display unit 24. Operate and give calculation instructions.

この演算指示があると、演算処理部22は被測定者の行動類別抽出のための手段としてまず測定装置1から転送させてきた歩数及び運動強度のデータ並びに時刻暦データから、行動抽出のために例えば運動強度データの時間暦を5分毎と、10分毎というように時間枠を定め、2時間までの窓枠単位について、各時間枠単位基準値と対応する代表値を運動強度データから算出する。次にこの算出した代表値とデータベースDBに記憶してある各行動毎の基準値とを比較し、算出した代表値が各時間枠の基準値を越えているかをチェックする。そしてどの行動の類別を決定する係数として、各時間枠における基準値と測定データから求めた代表値との残差が全て所定値範囲(運動強度での残差であれば例えば±1METs)内であれば、その2時間の窓枠単位での行動の類別を決定抽出する。 When there is this calculation instruction, the calculation processing unit 22 extracts the action from the step count and exercise intensity data and the time calendar data transferred from the measuring apparatus 1 as means for extracting the action category of the person to be measured. for example a motion time history of the intensity data every 5 minutes, set a time frame so that every 10 minutes, the window frames units up to 2 hours, calculating a representative value corresponding to each time frame unit reference value from the exercise intensity data To do. Next, the calculated representative value is compared with the reference value for each action stored in the database DB to check whether the calculated representative value exceeds the reference value for each time frame. As a coefficient for determining which action category, the residuals between the reference value in each time frame and the representative value obtained from the measurement data are all within a predetermined value range (for example, ± 1 METs if the residual is an exercise intensity residual). If there is, the classification of the action in the window frame unit for 2 hours is determined and extracted.

この類別抽出した後、演算処理部22は抽出した行動における運動強度の平均値或いは歩数の平均値を算出し、この算出結果を更にデータベースDBに登録している運動目標基準値と比較し、行動が運動目標基準値に達しているか否かの判断を行い、その判断結果を表示部24に表示する。この場合行動毎に算出した歩数の平均値或いは運動強度の平均値をも合わせて表示する。被測定者はこの表示を今後の行動の指標として生活習慣の改善を図ることができるのである。   After the classification is extracted, the arithmetic processing unit 22 calculates the average value of the exercise intensity or the average value of the number of steps in the extracted action, and compares the calculation result with the exercise target reference value registered in the database DB. Is determined whether or not the exercise target reference value has been reached, and the determination result is displayed on the display unit 24. In this case, the average value of the number of steps calculated for each action or the average value of exercise intensity is also displayed. The measured person can use this display as an indicator of future behavior to improve lifestyle.

尚上述の測定データから求めた代表値と、基準値との残差を求める方法以外に、クラスター分析によって行動の類別抽出を行っても良い。   In addition to the method of obtaining the residual between the representative value obtained from the measurement data and the reference value, behavior classification may be extracted by cluster analysis.

この場合、演算処理部22は、例えばクラスター分析のパラメータを上述の2時間の窓枠単位内の各時間枠毎の運動強度を用い、例えば測定データから求めた各窓枠単位内の時間枠毎運動強度のユークリッド距離を求めて、その距離が近いものがあれば、同じクラスターとする。同様にデータベースDBに記憶している各行動に対応する基準値についてもクラスター分析を行ってユークリッド距離を求め、両クラスター分析の結果を比較して基準値側で求めたユークリッド距離に近い測定データ側のクラスターを当該基準値に対応する行動であると判定し、類別抽出を行うのである。 In this case, the arithmetic processing unit 22 uses, for example, the exercise intensity for each time frame in the above-described 2-hour window frame unit as the cluster analysis parameter, for example, for each time frame in each window frame unit obtained from the measurement data. The Euclidean distance of the exercise intensity is obtained. Similarly, the reference value corresponding to each action stored in the database DB is also subjected to cluster analysis to determine the Euclidean distance, and the measurement data side close to the Euclidean distance calculated on the reference value side by comparing the results of both cluster analyzes It is determined that the cluster is an action corresponding to the reference value, and category extraction is performed.

また、データ処理装置2において、演算処理部22の制御下で、図3に示すような入力画面を用いて、被測定者自身が居住地、職業、職種、家族構成等の個人特性データを入力することでデータベースDBに登録し、且つ被測定者毎に、その社会的な個人特性に対応した図4に示すようカレンダーAのデータ作成を行うことができるようにするとともに、個人特性データやカレンダーAのデータに基づいて、類別する行動の上述する代表値を定めてデータベースDBに記憶するようにしても良い。これにより演算処理部22が上述の行動の類別抽出するときに、当該被測定者が勤務中の平日にとりえない行動や、或いは自転車や乗り物を通勤時に利用する場合にとりえない行動等は、類別対象外の行動として判定し、ノイズによる行動を除去し、行動の類別抽出の精度を高めることができる。 Further, in the data processing device 2, under the control of the arithmetic processing unit 22, the measured person inputs personal characteristic data such as residence, occupation, occupation, family structure, etc. using an input screen as shown in FIG. By doing so, it is possible to create data for the calendar A as shown in FIG. 4 corresponding to the social personal characteristics for each person to be measured, and for personal characteristics data and Based on the data of the calendar A, the above-described representative value of the action to be classified may be determined and stored in the database DB. When Thereby the arithmetic processing section 22 is categorized extracts actions described above, the person to be measured behavior and incapable of weekdays on duty, or no merit in case of utilizing a bicycle or ride upon commuting behavior etc. Can be determined as an action that is not classified, remove the action due to noise, and improve the accuracy of action classification extraction.

一実施形態のシステム構成図である。It is a system configuration figure of one embodiment. 一実施形態のデータ処理装置において類別抽出する行動の運動強度の変化波形例を示し、左から順に(a)は卓球・テニスのような行動の運動強度の変化波形、(b)は買物のような行動の運動強度の変化波形、(c)はウォーキングのような行動の運動強度の変化波形を示す。 The example of the exercise | movement intensity | strength change waveform which carries out classification extraction in the data processor of one Embodiment is shown, (a) is a change waveform of the exercise | movement intensity | strength of action like table tennis and tennis in order from the left, (b) is shopping. (C) shows a change waveform of the exercise intensity of the action such as walking. 一実施形態のデータ処理装置の表示部で表示される個人特性データ入力画面の表示例図である。It is a display example figure of the personal characteristic data input screen displayed on the display part of the data processor of one embodiment. 一実施形態のデータ処理装置の表示部で表示されるカレンダーデータ作成用画面の表示例図である。It is a display example figure of the screen for calendar data creation displayed on the display part of the data processor of one embodiment.

符号の説明Explanation of symbols

1 測定装置
10 加速度センサ
11 演算処理部
12a,12b メモリ部
13 表示部
14 通信部
15 時刻発生部
2 データ処理装置
20 外部記憶装置
21 通信部
22 演算処理部
23 入力部
24 表示部
DB データベース
DESCRIPTION OF SYMBOLS 1 Measurement apparatus 10 Acceleration sensor 11 Arithmetic processing part 12a, 12b Memory part 13 Display part 14 Communication part 15 Time generation part 2 Data processing apparatus 20 External storage device 21 Communication part 22 Operation processing part 23 Input part 24 Display part DB Database

Claims (5)

測定者の運動強度を測定する測定手段、及び、前記測定手段によって測定された前記運動強度の測定データを、時刻データを発生する時刻発生部から取得した時刻データに対応付けて逐次記憶する記憶手段を有する測定装置と、
前記測定装置から前記運動強度の測定データを前記時刻データとともに通信により取得し、所定時間の時間枠が複数連続してできる窓枠単位で被測定者の行動を類別する行動類別手段を有し、前記行動類別手段によって類別された行動毎に各行動における運動強度の平均値を算出するデータ処理装置とを備え
前記行動類別手段は、類別対象とする各行動を特徴付ける運動強度の代表値を基準値として、各時間枠に対応付けて前記基準値を記憶し、各時間枠において前記運動強度の測定データから求めた代表値と前記基準値とを比較することによって、前記窓枠単位で被測定者の行動を類別することを特徴とする活動量計測システム。
Measuring means for measuring the exercise intensity of the subject, and the measurement data of the exercise intensity measured by the measuring means, for storing sequentially in association with the time data obtained from the time generator for generating a time data storage A measuring device having means;
The measurement data of the exercise intensity from the measuring device together with the time data Tokushi retriever by the communication, the action classification means to classify the behavior of the subject in the window frame units timeframe predetermined time can be a plurality consecutive And a data processing device that calculates an average value of exercise intensity in each behavior for each behavior classified by the behavior classification means ,
The behavior classification means stores the reference value in association with each time frame using a representative value of the exercise intensity characterizing each action to be classified as a reference value, and is obtained from the measurement data of the exercise intensity in each time frame. By comparing the representative value and the reference value , the activity measurement system is characterized in that the actions of the person to be measured are classified for each window frame .
前記行動類別手段は、各時間枠において前記運動強度の測定データから求めた代表値と各行動に対応した前記基準値との残差が全て所定範囲内である場合に、前記窓枠単位で被測定者の行動を類別することを特徴とする請求項1記載の活動量計測システム。 The behavior classifying means covers the window frame unit when the residuals between the representative value obtained from the measurement data of the exercise intensity in each time frame and the reference value corresponding to each behavior are all within a predetermined range. The activity measurement system according to claim 1 , wherein the actions of the measurer are classified . 前記データ処理装置は、行動毎に算出した前記運動強度の平均値を、予め登録されている運動目標基準値と比較し、行動毎に前記運動目標基準値に達しているか否かを判断し、判断結果を表示部に表示させることを特徴とする請求項1又は2記載の活動量計測システム。 The data processing device compares the average value of the exercise intensity calculated for each action with a pre-registered exercise target reference value, determines whether or not the exercise target reference value is reached for each action, activity measurement system according to claim 1 or 2, wherein the displaying the determination result on the display unit. 前記行動類別手段は、前記運動強度の測定データをクラスター分析した結果と前記基準値に対してクラスター分析を行った結果との類似性の比較から行動の類別を抽出することを特徴とする請求項1記載の活動量計測システム。 The action classification means, and extracts the result of said measurement data of the exercise intensity and cluster analysis, the assortment of action from a comparison of similarity of the results cluster analysis was Tsu line with respect to the reference value The activity amount measuring system according to claim 1. 前記データ処理装置は、前記被測定者の社会的な個人特性に関連付けられたカレンダーを作成して、該カレンダーデータに基づき、類別する行動の基準となる代表値を設定する手段を備え、前記行動類別手段は、設定された該代表値を行動の類別抽出に用いる前記基準値とすることを特徴とする請求項乃至4の何れか記載の活動量計測システム。 Wherein the data processing device before SL to create a calendar associated with a social personal characteristics of the subject, on the basis of the calendar data, comprising means for setting a representative value serving as a reference for action to be classified, the The activity amount measuring system according to any one of claims 1 to 4, wherein the behavior classification means uses the set representative value as the reference value used for behavior classification extraction.
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