Miao Jin, Jun Zhang, Xiwen Chen, Quan Wang, Bing Lu, Wei Zhou, Gaoning Nie, Xu Wang
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引用次数: 4
摘要
电工工作环境中存在着许多不稳定因素,威胁着电工的人身安全。因此,如何保护电工人员是一个值得思考的问题。安全帽保护工人在跌倒时头部不受伤害。本文提出了一种检测电工是否戴安全帽的方法。该方法基于支持向量机(SVM)、梯度直方图(HOG)特征网格和颜色特征。首先,获取工人的工作场景图像信息。根据获取的图像,我们使用可变形零件模型(DPM)算法提取工人区域。在工人所在的区域,我们使用颜色空间转换和颜色特征匹配的方法提取安全帽可能存在的区域。在这个领域中,我们使用HOG特征训练的SVM来检测安全帽,最终实现对戴安全帽工人的判断。实验部分验证了该方法的有效性。与Color + CHT和Color + Number of Pixels相比,我们的方法提高了3 ~ 4个百分点。
Safety Helmet Detection Algorithm based on Color and HOG Features
There are many unstable factors in the working environment of electrical workers, which threaten their safety. Therefore, how to protect electrical workers is a problem worth thinking about. Safety helmet protects worker’s head from injury when they fall. This paper presents a method to detect whether electrical workers wear a safety helmet or not. This method is based on Support Vector Machine (SVM), the grids of Histograms of Oriented Gradient (HOG) features, and color features. Firstly, we get information about the worker’s work scene image. According to the acquired image, we use the Deformable Parts Model (DPM) algorithm to extract the worker’s area. In the area where the worker exists, we use the method of color space conversion and color feature matching to extract the area where the safety helmet may exist. In this area, we use the SVM trained by HOG features to detect the safety helmet and ultimately to realize the judgment of workers wearing a safety helmet. In the experimental part, the effectiveness of our method is demonstrated. Compared with the Color + CHT and Color + Number of Pixels, our method has been improved by 3 to 4 percentage points.