CVJul 9, 2023

CA-CentripetalNet: A novel anchor-free deep learning framework for hardhat wearing detection

arXiv:2307.04103v14 citationsh-index: 21
Originality Incremental advance
AI Analysis

This addresses safety monitoring in construction sites, but it is incremental as it builds on anchor-free deep learning frameworks.

The paper tackles the problem of hardhat wearing detection in construction sites to improve safety management, achieving 86.63% mAP with better performance and less memory consumption compared to existing methods.

Automatic hardhat wearing detection can strengthen the safety management in construction sites, which is still challenging due to complicated video surveillance scenes. To deal with the poor generalization of previous deep learning based methods, a novel anchor-free deep learning framework called CA-CentripetalNet is proposed for hardhat wearing detection. Two novel schemes are proposed to improve the feature extraction and utilization ability of CA-CentripetalNet, which are vertical-horizontal corner pooling and bounding constrained center attention. The former is designed to realize the comprehensive utilization of marginal features and internal features. The latter is designed to enforce the backbone to pay attention to internal features, which is only used during the training rather than during the detection. Experimental results indicate that the CA-CentripetalNet achieves better performance with the 86.63% mAP (mean Average Precision) with less memory consumption at a reasonable speed than the existing deep learning based methods, especially in case of small-scale hardhats and non-worn-hardhats.

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