Abstract

In this paper, we propose a new method for spotting and recognizing continuous human actions using a vision sensor. The method is comprised of depth-MHI-HOG (DMH), action modeling, action spotting, and recognition. First, to effectively separate the foreground from background, we propose a method called DMH. It includes a standard structure for segmenting images and extracting features by using depth information, MHI, and HOG. Second, action modeling is performed to model various actions using extracted features. The modeling of actions is performed by creating sequences of actions through k-means clustering; these sequences constitute HMM input. Third, a method of action spotting is proposed to filter meaningless actions from continuous actions and to identify precise start and end points of actions. By employing the spotter model, the proposed method improves action recognition performance. Finally, the proposed method recognizes actions based on start and end points. We evaluate recognition performance by employing the proposed method to obtain and compare probabilities by applying input sequences in action models and the spotter model. Through various experiments, we demonstrate that the proposed method is efficient for recognizing continuous human actions in real environments.

Highlights

  • In everyday life, people exchange information by using language and nonverbal expressions

  • We propose continuous human action recognition using the DMH feature and hidden Markov model (HMM)-based spotter model, and we evaluate the performance of this model

  • We have proposed methods for recognizing six everyday human actions (Bend, similar to another action (Sit), Raise Hand, Kick, Run, and Walk)

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Summary

Introduction

People exchange information by using language and nonverbal expressions. A person may greet someone by waving a hand. It is important to study recognition of nonverbal expressions in order to establish a natural interface. New studies have been actively researched to recognize speech [1] and nonverbal expressions [2] for exchanging information. Nonverbal expressions are demonstrated through facial expressions, the gaze, hand gestures, gait, bodily actions, and so on. Specific aspects of subjects are recognized through these expressions [3,4,5,6,7,8], while subject actions likewise use parts of the whole body (the head, arms, legs, etc.). It is difficult to automatically recognize actions because people have complex joint structures

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