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基于激光散斑图像的煤与矸石识别研究

Research on Recognition of Coal and Gangue Based on Laser Speckle Images.

作者信息

Li Hequn, Wang Qiong, Ling Ling, Lv Ziqi, Liu Yun, Jiao Mingxing

机构信息

School of Mechanical and Precision Instrument Engineering, Xi'an University of Technology, Xi'an 710048, China.

School of Chemical and Environmental Engineering, China University of Mining & Technology-Beijing, Beijing 100083, China.

出版信息

Sensors (Basel). 2023 Nov 11;23(22):9113. doi: 10.3390/s23229113.

Abstract

Coal gangue image recognition is a critical technology for achieving automatic separation in coal processing, characterized by its rapid, environmentally friendly, and energy-saving nature. However, the response characteristics of coal and gangue vary greatly under different illuminance conditions, which poses challenges to the stability of feature extraction and recognition, especially when strict illuminance requirements are necessary. This leads to fluctuating coal gangue recognition accuracy in industrial environments. To address these issues and improve the accuracy and stability of image recognition under variable illuminance conditions, we propose a novel coal gangue recognition method based on laser speckle images. Firstly, we studied the inter-class separability and intra-class compactness of the collected laser speckle images of coal and gangue by extracting gray and texture features from the laser speckle images, and analyzed the performance of laser speckle images in representing the differences between coal and gangue minerals. Subsequently, coal gangue recognition was achieved using an SVM classifier based on the extracted features from the laser speckle images. The fusion feature approach achieved a recognition accuracy of 94.4%, providing further evidence of the feasibility of this method. Lastly, we conducted a comparative experiment between natural images and laser speckle images for coal gangue recognition using the same features. The average accuracy of coal gangue laser speckle image recognition under various lighting conditions is 96.7%, with a standard deviation of the recognition accuracy of 1.7%. This significantly surpasses the recognition accuracy obtained from natural coal and gangue images. The results showed that the proposed laser speckle image features can facilitate more stable coal gangue recognition with illumination factors, providing a new, reliable method for achieving accurate classification of coal and gangue in the industrial environment of mines.

摘要

煤矸石图像识别是煤炭加工中实现自动分选的一项关键技术,具有快速、环保和节能的特点。然而,煤和矸石在不同光照条件下的响应特性差异很大,这给特征提取和识别的稳定性带来了挑战,尤其是在需要严格光照条件时。这导致工业环境中煤矸石识别准确率波动较大。为了解决这些问题并提高变光照条件下图像识别的准确率和稳定性,我们提出了一种基于激光散斑图像的新型煤矸石识别方法。首先,通过从激光散斑图像中提取灰度和纹理特征,研究了采集到的煤和矸石激光散斑图像的类间可分性和类内紧致性,并分析了激光散斑图像在表征煤和矸石矿物差异方面的性能。随后,基于从激光散斑图像中提取的特征,使用支持向量机分类器实现了煤矸石识别。融合特征方法的识别准确率达到了94.4%,进一步证明了该方法的可行性。最后,我们使用相同的特征对煤矸石识别的自然图像和激光散斑图像进行了对比实验。不同光照条件下煤矸石激光散斑图像识别的平均准确率为96.7%,识别准确率的标准差为1.7%。这显著超过了从天然煤和矸石图像中获得的识别准确率。结果表明,所提出的激光散斑图像特征能够在光照因素影响下更稳定地识别煤矸石,为在矿山工业环境中实现煤和矸石的准确分类提供了一种新的可靠方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5d87/10674464/07a208f88699/sensors-23-09113-g001.jpg

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