Algorithms (Nov 2018)

A Study on Faster R-CNN-Based Subway Pedestrian Detection with ACE Enhancement

  • Hongquan Qu,
  • Meihan Wang,
  • Changnian Zhang,
  • Yun Wei

DOI
https://doi.org/10.3390/a11120192
Journal volume & issue
Vol. 11, no. 12
p. 192

Abstract

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At present, the problem of pedestrian detection has attracted increasing attention in the field of computer vision. The faster regions with convolutional neural network features (Faster R-CNN) are regarded as one of the most important techniques for studying this problem. However, the detection capability of the model trained by faster R-CNN is susceptible to the diversity of pedestrians’ appearance and the light intensity in specific scenarios, such as in a subway, which can lead to the decline in recognition rate and the offset of target selection for pedestrians. In this paper, we propose the modified faster R-CNN method with automatic color enhancement (ACE), which can improve sample contrast by calculating the relative light and dark relationship to correct the final pixel value. In addition, a calibration method based on sample categories reduction is presented to accurately locate the target for detection. Then, we choose the faster R-CNN target detection framework on the experimental dataset. Finally, the effectiveness of this method is verified with the actual data sample collected from the subway passenger monitoring video.

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