Abstract

In recent years, the pedestrian detection technology of a single 2D image has been dramatically improved. When the scene becomes very crowded, the detection performance will deteriorate seriously and cannot meet the requirements of autonomous driving perception. With the introduction of the multi-view method, the task of pedestrian detection in crowded or fuzzy scenes has been significantly improved and has become a widely used method in autonomous driving. In this paper, we construct a double-branch feature fusion structure, the first branch adopts a lightweight structure, the second branch further extracts features and gets the feature map obtained from each layer. At the same time, the receptive field is enlarged by expanding convolution. To improve the speed of the model, the keypoint is used instead of the entire object for regression without an NMS post-processing operation. Meanwhile, the whole model can be learned from end to end. Even in the presence of many people, the method can still perform better on accuracy and speed. In the standard of Wildtrack and MultiviewX dataset, the accuracy and running speed both perform better than the state-of-the-art model, which has great practical significance in the autonomous driving field.

Highlights

  • Multi-View Convolution FusionWhether for ADAS or autonomous driving, pedestrian detection has traditionally been an unavoidable problem

  • In the process of vehicle operation, if we can accurately detect the position of each pedestrian, it will greatly guarantee the safety of the autonomous driving field

  • Pedestrian detection has become a hot topic in autonomous driving over the past 20 years

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Summary

Introduction

Whether for ADAS or autonomous driving, pedestrian detection has traditionally been an unavoidable problem. In the process of vehicle operation, if we can accurately detect the position of each pedestrian, it will greatly guarantee the safety of the autonomous driving field. Pedestrian detection has become a hot topic in autonomous driving over the past 20 years. The mobility of pedestrians makes them less predictable than vehicles. In the task of pedestrian detection, occlusion has traditionally been the focus of attention. It is difficult to predict the location of all pedestrians under the intersection, since the pedestrians may be blocked by vehicles or other pedestrians. Occlusion is a thorny problem in pedestrian detection, which requires higher accuracy and speed. In the past two years, many people have proposed their solutions on pedestrian detection problems

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