1. 一种改进的深度残差网络行人检测方法.
- Author
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郝旭政 and 柴争义
- Subjects
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PEDESTRIANS , *FEATURE extraction , *ARTIFICIAL neural networks , *TEST interpretation , *DEEP learning , *BOXES - Abstract
To improve the accuracy of the pedestrian detection method. this paper proposed a rectangular input of convolution neural network enhance the new pedestrian detection method based on the depth residual network and YOLO object detection method. The rectangular input helped the model gain the pedestrian characteristics expression by analyzing the expression and distribution characteristics of pedestrians in the images. The depth residual network with pre-activation for YOLO object detection improved the feature extraction ability through more layers of convolution neural networks. Hybrid dataset training and cluster anchor boxes could also improve the pedestrian detection performance. Hie test results of INRIA dataset prove that the method has better detection performance than the popular pedestrian detection methods, the index of false positive per image can reduce to 13.86% .improving ranging from 1.51% to 58. 62% in varying degrees. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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