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  • 學位論文

基於模糊決策樹識別日常生活活動

The Activity Identification of Human Daily Living Based on Fuzzy Decision Tree

指導教授 : 陳榮靜
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摘要


智慧家庭的基本概念之一為有效地了解當使用者生活行為有所變化時的環境情境訊息,並適當做出決策以幫助環境內的用戶。為了取得較佳的情境訊息,經常會採用一般常用的感測器、可獲取到影像資料的攝影機以及收集音頻資料的麥克風等設備,這些設備都可針對環境內不同的形態的資料進行採集的動作。收集到的情境資料質量較高,雖然可以有較佳的決策結果,但相對的這將會提高電腦運算以及需要硬體較佳的電腦來處理這些資料。此外,在環境內安裝的監聽設備會對於用戶產生受到監控的感覺,因而產生出排斥感。其中,又以能採集到影像資料和音頻資料的監聽設備最被排斥。在本研究中,我們採用紅外線感測器所獲取的數據進行活動分析。由於行為者對於活動發生時所會產生出的動態程度難以用自然語言讓電腦了解,另一方面活動容易受到外部因素,產生出不同變化。為了有效地讓電腦了解活動量的差異以及不確定性問題,我們提出一套基於模糊邏輯的活動識別架構,使用模糊邏輯,分析感測器所收集到的數據,並識別用戶的活動。根據實驗的結果,可識別85.49%的簡易日常活動。

並列摘要


The basic concept of smart environment is to understand the context information of environmental and human behavioral changes to provide appropriate services accordingly. To obtain the context information, people often use video cameras, microphones, and other devices. These devices can obtain complex environmental data but they also need powerful equipment for handling the data. In addition, monitoring equipment will generate privacy issues. Users will generate sense of exclusion. In these devices, users generally do not like the graphic and audio monitoring equipment. We mainly collect user’s activity information through the most simple data quality of sensor. The activity of human is difficult to make computers understand by natural language. On the other hand, activity vulnerable to external factors produce different variations. In order to effectively address these issues, we propose an activity identification architecture based on fuzzy logic. This method uses fuzzy logic to deal with sensor data and uses fuzzy decision trees to identify user’s activities. According to the results of preliminary experiments, the system can identify 85.49% of the daily human activities.

參考文獻


[1] Â. Costa, J. C. Castillo, P. Novais, A. Fernández-Caballero, and R. Simoes (2012), “Sensor-Driven Agenda for Intelligent Home Care of The Elderly,” Expert Systems with Applications, Vol. 39, No. 15, pp. 12192-12204.
[2] C. C. Yang, and Y. L. Hsu (2012), “Remote Monitoring and Assessment of Daily Activities in the Home Environment,” Journal of Clinical Gerontology and Geriatrics, Vol. 3, No. 3, pp. 97-104.
[5] D. Fuentes, L. Gonzalez-Abril, C. Angulo, and J. A. Ortega (2012), “Online Motion Recognition Using an Accelerometer in a Mobile Device,” Expert Systems with Applications, Vol. 39, No. 3, pp. 2461-2465.
[6] D. Ayers, and M. Shah, (2001), “Monitoring Human Behavior from Video Taken in an Office Environment,” Image and Vision Computing, Vol. 19, No. 12, pp. 833-846.
[7] E. Hüllermeier (2011), “Fuzzy Sets in Machine Learning and Data Mining,” Applied Soft Computing, Vol. 11, No. 2, pp. 1493-1505.

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