EMDFNet: Efficient Multi-scale and Diverse Feature Network for Traffic Sign Detection
Pengyu Li, Chenhe Liu, Tengfei Li, Xinyu Wang, Shihui Zhang, Dongyang, Yu

TL;DR
EMDFNet is a novel traffic sign detection network that enhances feature diversity and multi-scale integration, achieving superior accuracy and real-time performance on benchmark datasets.
Contribution
The paper introduces EMDFNet, which combines an Augmented Shortcut Module and an Efficient Hybrid Encoder to improve small object detection in traffic signs.
Findings
Outperforms state-of-the-art detectors on TT100K and GTSDB datasets.
Effectively detects small traffic signs with real-time processing.
Enhances feature diversity and multi-scale integration.
Abstract
The detection of small objects, particularly traffic signs, is a critical subtask within object detection and autonomous driving. Despite the notable achievements in previous research, two primary challenges persist. Firstly, the main issue is the singleness of feature extraction. Secondly, the detection process fails to effectively integrate with objects of varying sizes or scales. These issues are also prevalent in generic object detection. Motivated by these challenges, in this paper, we propose a novel object detection network named Efficient Multi-scale and Diverse Feature Network (EMDFNet) for traffic sign detection that integrates an Augmented Shortcut Module and an Efficient Hybrid Encoder to address the aforementioned issues simultaneously. Specifically, the Augmented Shortcut Module utilizes multiple branches to integrate various spatial semantic information and channel…
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Taxonomy
TopicsHandwritten Text Recognition Techniques · Vehicle License Plate Recognition · Advanced Neural Network Applications
