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\section{Conclusion\label{sec:conclusion}} |
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In this paper, we use the SRCNN to improve the resolution of thermal sensor, and |
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detect the pose of each frame. |
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The result shows that Super-resolution can slightly improve the accuracy of pose |
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detection. We develop a method to detect the turning over. It has about |
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50\% recall rate and 83\% precision. |
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In this paper, we propose a data fusing and enhancement method to fuse data from multiple low-resolution |
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thermal sensors and use the SRCNN to enhance resolution, the result shows that |
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it can improve the accuracy of single frame pose detection by 5\%. |
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We also propose a turning over detection method using multiple frames to reduce the noise |
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and considering the trend of pose change to deal with the residual heat. The result shows |
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that The accuracy of pose detection is 65\%, and the recall rate and precision of turning over detection |
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is 50\% and 83\%. |