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Emergency Signal Detection based on Arm Gesture by Motion Vector Tracking in Face Area

  • Fayyaz, Rabia (Department of Computer Engineering, Hanbat National University) ;
  • Park, Dae Jun (Department of Computer Engineering, Hanbat National University) ;
  • Rhee, Eun Joo (Department of Computer Engineering, Hanbat National University)
  • Received : 2018.12.18
  • Accepted : 2019.01.24
  • Published : 2019.02.28

Abstract

This paper presents a method for detection of an emergency signal expressed by arm gestures based on motion segmentation and face area detection in the surveillance system. The important indicators of emergency can be arm gestures and voice. We define an emergency signal as the 'Help Me' arm gestures in a rectangle around the face. The 'Help Me' arm gestures are detected by tracking changes in the direction of the horizontal motion vectors of left and right arms. The experimental results show that the proposed method successfully detects 'Help Me' emergency signal for a single person and distinguishes it from other similar arm gestures such as hand waving for 'Bye' and stretching. The proposed method can be used effectively in situations where people can't speak, and there is a language or voice disability.

Keywords

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Fig. 1. The flow of the suggested method.

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Fig. 2. Arm gestures in time series. (a) At time 0. (b) At time 1. (c) At time 2. (d) At time 3. (e) At time 4. (f) At time 5.

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Fig. 3. Motion segmentation. (a) Previous frame. (b) Current frame. (c) Motion s egmentation.

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Fig. 4. Example of accurate and inaccurate arm-gesture. (a) Accurate arm-gesture of N-tracking points. (b) Inaccurate arm-gesture of N-tracking points. (c) Accurate arm-gesture of averaged N-tracking points of (a). (d) Accurate arm-gesture of averaged N-tracking points of (b).

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Fig. 5. Left and right arm gestures tracking within search area along face. (a) N-tracking points. (b) Average N-tracking points.

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Fig. 6. Arm gestures for Help Me.

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Fig. 7. Gestures classified as "Help me".

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Fig. 8. Gestures classified as "BYE or STRETCHING".

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