Article ID Journal Published Year Pages File Type
294570 Mining Science and Technology (China) 2011 4 Pages PDF
Abstract

In order to monitor dangerous areas in coal mines automatically, we propose to detect helmets from underground coal mine videos for detecting miners. This method can overcome the impact of similarity between the targets and their background. We constructed standard images of helmets, extracted four directional features, modeled the distribution of these features using a Gaussian function and separated local images of frames into helmet and non-helmet classes. Out experimental results show that this method can detect helmets effectively. The detection rate was 83.7%.

Related Topics
Physical Sciences and Engineering Earth and Planetary Sciences Economic Geology
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