Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis
This research is a preliminary research to identify facial expression. The research objective is to detect face and facial expression from static images that contain human face. Image can be obtained from a image or from video. For the video, the image be converted to frames using FrameGrabber softw...
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2007
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my.uitm.ir.637222024-03-25T08:06:37Z https://ir.uitm.edu.my/id/eprint/63722/ Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis Aris @ Azis, Zulfiqar @ Zulfikri This research is a preliminary research to identify facial expression. The research objective is to detect face and facial expression from static images that contain human face. Image can be obtained from a image or from video. For the video, the image be converted to frames using FrameGrabber software. For face detection, it will use the Ranknet method is being used to extracted the image and convert to grayscale image. Then the resolution of the image is reduced due to memory constraint and to increase processing speed. The experiments have been made using Sobel Edge Detection, Canny Edge Detection, Prewitt Edge Detection and Robert Edge Detection. When experiment to detect face figure is conducted with zero threshold, Sobel Edge Detection is the best method to apply, while Canny Edge Detection detected with much noise. But if experiment conducted with 0.35 threshold, Sobel Edge Detection, Prewitt Edge Detection and Robert Edge Detection only detects less edge, while Canny Edge Detection can detect face figure properly. From this experiment. Canny Edge Detection has been proven to be the best technique for edge detection. Then using prior knowledge, the eyes and mouth regions are detected. The result of this region could be input to any pattern recognition classifier. 2007 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/63722/1/63722.pdf Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis. (2007) Degree thesis, thesis, Universiti Teknologi MARA (UiTM). |
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This research is a preliminary research to identify facial expression. The research objective is to detect face and facial expression from static images that contain human face. Image can be obtained from a image or from video. For the video, the image be converted to frames using FrameGrabber software. For face detection, it will use the Ranknet method is being used to extracted the image and convert to grayscale image. Then the resolution of the image is reduced due to memory constraint and to increase processing speed. The experiments have been made using Sobel Edge Detection, Canny Edge Detection, Prewitt Edge Detection and Robert Edge Detection. When experiment to detect face figure is conducted with zero threshold, Sobel Edge Detection is the best method to apply, while Canny Edge Detection detected with much noise. But if experiment conducted with 0.35 threshold, Sobel Edge Detection, Prewitt Edge Detection and Robert Edge Detection only detects less edge, while Canny Edge Detection can detect face figure properly. From this experiment. Canny Edge Detection has been proven to be the best technique for edge detection. Then using prior knowledge, the eyes and mouth regions are detected. The result of this region could be input to any pattern recognition classifier. |
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Thesis |
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Aris @ Azis, Zulfiqar @ Zulfikri |
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Aris @ Azis, Zulfiqar @ Zulfikri Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
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Aris @ Azis, Zulfiqar @ Zulfikri |
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Aris @ Azis, Zulfiqar @ Zulfikri |
title |
Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
title_short |
Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
title_full |
Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
title_fullStr |
Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
title_full_unstemmed |
Face and facial expression detection from static images / Zulfiqar @ Zulfikri Aris @ Azis |
title_sort |
face and facial expression detection from static images / zulfiqar @ zulfikri aris @ azis |
publishDate |
2007 |
url |
https://ir.uitm.edu.my/id/eprint/63722/1/63722.pdf https://ir.uitm.edu.my/id/eprint/63722/ |
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1794641562364280832 |
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13.1944895 |