Computer Engineering and Applications ›› 2021, Vol. 57 ›› Issue (22): 177-181.DOI: 10.3778/j.issn.1002-8331.2006-0354

• Pattern Recognition and Artificial Intelligence • Previous Articles     Next Articles

Lightweight and High-Precision Convolutional Neural Network for Helmet Recognition Method

CHEN Liu, CHEN Mingju, XUE Zhishuang, LUO Shisheng   

  1. School of Information Engineering, Sichuan University of Science & Engineering, Zigong, Sichuan 643000, China
  • Online:2021-11-15 Published:2021-11-16

轻量化高精度卷积神经网络的安全帽识别方法

陈柳,陈明举,薛智爽,罗仕胜   

  1. 四川轻化工大学 人工智能四川省重点实验室,四川 自贡 643000

Abstract:

Due to the complexity of construction environment, machine vision based helmet recognition methods often have false detections and missed detections. In order to improve the accuracy of helmet recognition in complex environments and satisfy the real-time requirement, this paper proposes a lightweight and high-precision convolutional neural network based on the characteristics of the receptive field. The convolutional neural network is based on the RFBnet network, and a feature pyramid network module is embedded to the neural network to represent the shallow semantic information and the deep semantic information simultaneously, so as to improve the accuracy of helmet recognition with different shapes and sizes in complex construction environments. SE-Ghost module is used to lighten the network backbone and reduce the complexity of the network without the network feature extraction capability changed. In the experiment, the proposed convolutional neural network based on receptive field is compared with current main convolutional neural networks, the results show that the proposed network has higher accuracy than YOLO-v3, RFBnet-300 and RFBnet-512 networks, and increases 1.60 percentage points, 3.62 percentage points and 0.98 percentage points respectively, while the detection speed reaches 20 frame/s.

Key words: helmet detection, convolutional neural network, receptive field structure, feature pyramid

摘要:

由于施工环境的复杂性,基于机器视觉的安全帽识别方法常常出现误检与漏检的情况。为提高复杂环境下安全帽识别的准确率,同时满足实时性要求,提出一种基于视觉感受野特性的轻量化高精度卷积神经网络。该卷积神经网络以RFBnet网络为基础,增加特征金字塔网络模块,使神经网络同时兼顾浅层语义信息和深层语义信息的表示能力,以实现复杂施工环境下不同形态与大小安全帽的识别。采用SE-Ghost模块在保持网络特征提取能力不变的情况下,对主干网络结构进行轻量化。为验证方法的性能,将基于感受野特性的轻量化卷积神经网络和当前主要卷积神经网络进行实验对比,结果表明,所提网络模型的检测准确率较YOLO-v3、RFBnet-300和RFBnet-512网络分别提高了1.60个百分点、3.62个百分点和0.98个百分点,检测速度达到20?frame/s。

关键词: 安全帽检测, 卷积神经网络, 感受野结构, 特征金字塔