Gas Cylinder Detection Using Deep Learning Based YOLOv5 Object Detection Method

Abdulkadir Albayrak, M. S. Özerdem
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引用次数: 1

Abstract

Detection and tracking of objects has critical importance in terms of speeding up the process and facilitating the work in many areas. Especially in the process of counting objects, which is difficult and time-consuming for experts. In this paper, a study was carried out to detect gas cylinders with different colors and shapes using the deep learning-based Yolov5 method. The process of counting cylinders in the stock area or in the filling facilities can be difficult for the specialist due to the different sizes, arrangement and large number of cylinders. Within the scope of the study, a data set containing different types of cylinders in gas filling facilities was created. When the obtained results are evaluated, it has been observed that the Yolov5 algorithm detects the gas cylinders with different color and shape properties with a high success rate of 96.16%. In addition to the detection success, it has been observed that the method is also successful in different objective detections such as precision, sensitivity and box intersection.
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基于YOLOv5深度学习的气瓶检测目标检测方法
物体的检测和跟踪对于加快进程和促进许多领域的工作具有至关重要的意义。特别是在计算物体的过程中,这对专家来说是困难和耗时的。本文采用基于深度学习的Yolov5方法对不同颜色和形状的气瓶进行检测研究。由于不同的尺寸、排列和大量的钢瓶,在库存区或灌装设施中计算钢瓶的过程对专家来说是困难的。在研究范围内,创建了一个包含不同类型气瓶的数据集。对得到的结果进行评价,发现Yolov5算法对不同颜色和形状属性的气瓶进行检测,成功率高达96.16%。除了检测成功外,还观察到该方法在精度、灵敏度、箱形相交等不同的客观检测上也是成功的。
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