Improving the accuracy of erroneous-plan recognition system for Activities of Daily Living

Using ambient intelligence to assist people with dementia in carrying out their Activities of Daily Living (ADLs) independently in smart home environment is an important research area, due to the projected increasing number of people with dementia. We present herein, a system and algorithms for the automated recognition of ADLs; the ADLs are in terms of plans made up encoded sequences of micro-context information gathered by sensors in a smart home. Previously, the Erroneous-Plan Recognition (EPR) system was developed to specifically handle the wide spectrum of micro contexts from multiple sensing modalities. The EPR system monitors the person with dementia and determines if he has executed a correct or erroneous ADL. However, due to the noisy readings of the sensing modalities, the EPR system has problems in accurately detecting the erroneous ADLs. We propose to improve the accuracy of the EPR system by two new key components. First, we model the smart home environment as a Markov decision process (MDP), with the EPR system built upon it. Simple referencing of this model allows us to filter erroneous readings of the sensing modalities. Second, we use the reinforcement learning concept of probability and reward to infer erroneous readings that are not filtered by the first key component.We conducted extensive experiments and showed that the accuracy of the new EPR system is 26.2% higher than the previous system, and is therefore a better system for ambient assistive living applications.

[1]  Jesse Hoey,et al.  A planning system based on Markov decision processes to guide people with dementia through activities of daily living , 2006, IEEE Transactions on Information Technology in Biomedicine.

[2]  Robert J. Willis,et al.  National estimates of the quantity and cost of informal caregiving for the elderly with dementia , 2001, Journal of General Internal Medicine.

[3]  Andrei Tolstikov,et al.  Model and algorithmic framework for detection and correction of cognitive errors. , 2009, Technology and health care : official journal of the European Society for Engineering and Medicine.

[4]  Andrei Tolstikov,et al.  2-layer Erroneous-Plan Recognition for dementia patients in smart homes , 2009, 2009 11th International Conference on e-Health Networking, Applications and Services (Healthcom).

[5]  Chris D. Nugent,et al.  Assessment of the Impact of Sensor Failure in the Recognition of Activities of Daily Living , 2008, ICOST.

[6]  C. Mathers,et al.  Global prevalence of dementia: a Delphi consensus study , 2005, The Lancet.

[7]  Ben J. A. Kröse,et al.  Learning from delayed rewards , 1995, Robotics Auton. Syst..

[8]  Martin L. Puterman,et al.  Markov Decision Processes: Discrete Stochastic Dynamic Programming , 1994 .

[9]  Pankaj Kumar,et al.  Queue based fast background modelling and fast hysteresis thresholding for better foreground segmentation , 2003, Fourth International Conference on Information, Communications and Signal Processing, 2003 and the Fourth Pacific Rim Conference on Multimedia. Proceedings of the 2003 Joint.

[10]  Gerhard Tröster,et al.  Probabilistic parsing of dietary activity events , 2007, BSN.

[11]  Jesse Hoey,et al.  Assisting persons with dementia during handwashing using a partially observable Markov decision process. , 2007, ICVS 2007.

[12]  Chen-Khong Tham,et al.  Eating activity primitives detection - a step towards ADL recognition , 2008, HealthCom 2008 - 10th International Conference on e-health Networking, Applications and Services.

[13]  I. McDowell,et al.  Measuring health: A guide to rating scales and questionnaires, 3rd ed. , 2006 .

[14]  Henry A. Kautz,et al.  An Overview of the Assisted Cognition Project , 2002 .

[15]  Eitan M. Gurari,et al.  Introduction to the theory of computation , 1989 .

[16]  Sylvain Giroux,et al.  Pervasive assistance in smart homes for people with intellectual disabilities: A case study on meal preparation , 2008 .

[17]  Rajeev Rastogi,et al.  Scalable regular expression matching on data streams , 2008, SIGMOD Conference.

[18]  Diane J. Cook,et al.  Keeping the Resident in the Loop: Adapting the Smart Home to the User , 2009, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[19]  Sim Heng Ong,et al.  Tracking Multiple Objects using Probability Hypothesis Density Filter and Color Measurements , 2007, 2007 IEEE International Conference on Multimedia and Expo.

[20]  Z. Zenn Bien,et al.  Context Aware Life Pattern Prediction Using Fuzzy-State Q-Learning , 2007, ICOST.

[21]  T. Mills,et al.  Measuring Health: A Guide to Rating Scales and Questionnaires , 2006 .

[22]  Gwenn Englebienne,et al.  Accurate activity recognition in a home setting , 2008, UbiComp.

[23]  Chung-Chih Lin,et al.  A Healthcare Integration System for Disease Assessment and Safety Monitoring of Dementia Patients , 2008, IEEE Transactions on Information Technology in Biomedicine.

[24]  Sally McClean,et al.  Uncertain information management for ADL monitoring in smart homes. , 2009 .