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  • 王偉, 李擎, 張德政, 栗輝, 王昊. 基于深度學習的礦石圖像處理研究綜述[J]. 工程科學學報, 2023, 45(4): 621-631. DOI: 10.13374/j.issn2095-9389.2022.01.23.001
    引用本文: 王偉, 李擎, 張德政, 栗輝, 王昊. 基于深度學習的礦石圖像處理研究綜述[J]. 工程科學學報, 2023, 45(4): 621-631. DOI: 10.13374/j.issn2095-9389.2022.01.23.001
    WANG Wei, LI Qing, ZHANG De-zheng, LI Hui, WANG Hao. A survey of ore image processing based on deep learning[J]. Chinese Journal of Engineering, 2023, 45(4): 621-631. DOI: 10.13374/j.issn2095-9389.2022.01.23.001
    Citation: WANG Wei, LI Qing, ZHANG De-zheng, LI Hui, WANG Hao. A survey of ore image processing based on deep learning[J]. Chinese Journal of Engineering, 2023, 45(4): 621-631. DOI: 10.13374/j.issn2095-9389.2022.01.23.001

    基于深度學習的礦石圖像處理研究綜述

    A survey of ore image processing based on deep learning

    • 摘要: 聚焦于礦石勘探和將礦石破碎篩分后的皮帶運輸兩個環節,系統總結了深度學習技術在礦石圖像處理中的主要應用,包括礦石分類、粒度分析和異物識別等任務,并分門別類地梳理了完成以上三大任務的常用算法及其優缺點。其中,礦石分類在地質勘探中起著重要作用;粒度分析能為破碎機和傳送皮帶的控制提供參考依據,還能識別出給礦皮帶上過大尺寸的礦石,防止處于給礦皮帶和受礦皮帶之間的轉運緩沖倉內發生堵料事故;異物識別能將皮帶上混在礦石中的有害物品檢測出來。

       

      Abstract: Ore is an essential industrial raw material and strategic resource that plays an important role in China’s economic construction. The smart mine aims to build an unmanned, efficient, intelligent, and remote factory to improve quality, reduce cost, save energy, and increase the efficiency of mineral resource extraction. Ore image processing technology can automatically and efficiently complete a series of difficult and repetitive tasks, which constitutes an important part of smart mine construction. However, open-air operation modes, high-dust environments, and ore diversity have brought great challenges to ore image processing. Benefiting from its strong automatic feature extraction ability, deep learning can deeply perceive a complex environment, which enables it to play an important role in the ore image processing field and help traditional mining companies transform into efficient, green, and intelligent enterprises. This paper focuses on two production stages, including ore prospecting and belt transportation. We systematically summarize the main applications of deep learning in ore image processing, including ore classification, particle size analysis, and foreign material recognition, sort out the corresponding algorithms, and analyze their advantages and disadvantages. Specifically, according to the number of ores in an image, ore classification is divided into single-object and multi-object classifications. Single-object classification is mostly addressed by image classification networks, while multi-object classification is mostly accomplished by object detection and semantic segmentation networks. Single-object classification plays an important role in geological prospecting. Particle size refers to the size information of ores in an image. Generally, it can be divided into three modes: particle size statistics, particle size classification, and large block detection. Among these modes, the first and the third are mainly used in actual industrial production. Particle size statistics are determined mostly using semantic segmentation networks and can provide a reference for the control of crushers and conveyor belts. Large block detection is performed mostly by adopting object detection networks and can identify the oversized ore on an ore feeding belt and prevent material blockage accidents in the transfer buffer bin between the ore feeding belt and the ore receiving belt. Foreign material recognition detects harmful objects mixed in the ores on the belt to ensure product quality and prevent the belt from tearing. Object detection technology is often used to complete the task of foreign material recognition.

       

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