Anchor-Free Object Detection with Scale-Aware Networks for Autonomous Driving

Author:

Piao Zhengquan,Wang Junbo,Tang Linbo,Zhao Baojun,Zhou Shichao

Abstract

Current anchor-free object detectors do not rely on anchors and obtain comparable accuracy with anchor-based detectors. However, anchor-free object detectors that adopt a single-level feature map and lack a feature pyramid network (FPN) prior information about an object’s scale; thus, they insufficiently adapt to large object scale variation, especially for autonomous driving in complex road scenes. To address this problem, we propose a divide-and-conquer solution and attempt to introduce some prior information about object scale variation into the model when maintaining a streamlined network structure. Specifically, for small-scale objects, we add some dense layer jump connections between the shallow high-resolution feature layers and the deep high-semantic feature layers. For large-scale objects, dilated convolution is used as an ingredient to cover the features of large-scale objects. Based on this, a scale adaptation module is proposed. In this module, different dilated convolution expansion rates are utilized to change the network’s receptive field size, which can adapt to changes from small-scale to large-scale. The experimental results show that the proposed model has better detection performance with different object scales than existing detectors.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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5. Deep learning

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