Abstract

To recognize individual activities in multi-resident environments with pervasive sensors, some researchers have pointed out that finding data associations can contribute to activity recognition and previous methods either need or infer data association when recognizing new multi-resident activities based on new observations from sensors. However, it is often difficult to find out data associations, and available approaches to multi-resident activity recognition degrade when the data association is not given or induced with low accuracy. This paper exploits some simple knowledge of multi-resident activities through defining Combined label and the state set, and proposes a two-stage activity recognition method for multi-resident activity recognition. We define Combined label states at the model building phase with the help of data association, and learn Combined label states at the new activity recognition phase without the help of data association. Our two stages method is embodied in the new activity recognition phase, where we figure out multi-resident activities in the second stage after learning Combined label states at first stage. The experiments using the multi-resident CASAS data demonstrate that our method can increase the recognition accuracy by approximately 10%.

Highlights

  • Activity recognition has appeared as an Ambient Intelligence (AmI) feature to facilitate the development of applications that are aware of users’ presence and context and are adaptive and responsive to their needs and habits

  • This paper proposes a two-stage method for multi-resident activity recognition to improve the performance

  • The State Event Matrix corresponding to the testing dataset is obtained by backward reasoning Combined label states to State Event Set based on inverse mapping f 1, where Combined label states are inferred based on observations from sensors using the trained activity recognition model

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Summary

Introduction

Activity recognition has appeared as an Ambient Intelligence (AmI) feature to facilitate the development of applications that are aware of users’ presence and context and are adaptive and responsive to their needs and habits. Besides data association in training activity recognition models, previous methods either need or infer data association when recognizing new multi-resident activities based on new observations from sensors. Our method builds activity recognition models using a training dataset with the help of data association, while does not need data association when recognizing new multi-resident activities based on new observations from sensors. This is dictated by two reasons: first, for the training dataset, we need the simple knowledge to build State Event Matrix to create the State.

Problem Statement
Some Definitions
Hidden Markov Model
Conditional Random Field
Two-Stage Method for Multi-Resident Activity Recognition
Dataset Preparation
Measurement Criteria
Experiment 1
Experiment 2
Findings
Conclusions
Full Text
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