Abstract

Fall detection is a hot research issue in intelligent video surveillance. Falls can generate physical and psychological damage, especially for the elderly. Different from most conventional vision-based fall detection methods typically relying on hand-crafted features, fall detection methods based on deep learning techniques can automatically learn features and hence have got widespread concern recently. However, as deep networks are increasingly applied to fall detection, the problem of information loss in the deep networks can not be ignored, because this will ultimately affect the performance of fall detection. To solve the above problem, we propose a vision-based fall detection method using multi-task hourglass convolutional auto-encoder (HCAE). In this method, hourglass residual units (HRUs) are introduced into the encoder of the HCAE to extract multiscale features by expanding receptive fields of neurons. A multi-task mechanism is presented to enhance the feature representativeness of the network by completing an auxiliary task of frame reconstruction while realizing the main task of fall detection. Experimental results demonstrate that, the proposed method can effectively achieve accurate fall detection with the shallow-layer network, and outperforms several state-of-the-art methods.

Highlights

  • Fall is a sudden, involuntary, unintentional postural change which may endanger people’s lives, especially for elderly people

  • PROPOSED METHOD In this work, a novel method based on the hourglass convolutional auto-encoder (HCAE) with hourglass residual units (HRUs) and a multi-task mechanism is proposed for fall detection

  • The intermediate feature is utilized in a multi-task mechanism, in which fall detection is completed as the main task by classifiying the intermediate feature using a classifier and frame reconstruction is realized as the secondary task by the decoder to enhance the representativeness of the intermediate feature

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Summary

INTRODUCTION

Involuntary, unintentional postural change which may endanger people’s lives, especially for elderly people. It has become very important to develop intelligent surveillance systems, especially vision-based systems, which can automatically monitor and detect falls [3]. X. Cai et al.: Vision-Based Fall Detection With Multi-Task HCAE applied to fall detection [7]–[11]. To solve the above problem, in this paper, we propose a vision-based fall detection method using multi-task hourglass convolutional auto-encoder (HCAE). A multi-task mechanism, including a main task of fall judgment and an auxiliary task of frame reconstruction, is proposed in which the auxiliary task is used to enhance the representativeness of the feature in the network and further help complete the main task of fall detection.

RELATED WORK
MULTI-TASK MECHANISM
VALIDATION EXPERIMENTS
EXPERIMENTAL RESULTS
Findings
CONCLUSION
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