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Improved Faster R-CNN algorithm for defect detection in powertrain assembly line

机译:提高动力总成线路缺陷检测的更快R-CNN算法

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摘要

Inspection is a vital part of quality control in manufacturing systems. Some edges are difficult to extract because of the brightness and contrast caused by lighting equipment. To solve this problem, an improved Faster R-CNN algorithm is proposed. Based on the original framework, the anchors are optimized by clustering and RoI Pooling is replaced by RoI Align to improve the detection capability of sand inclusion defects. Training and testing on the image dataset of engine surface, the algorithm is verified to give the type and location of the defects with high accuracy and efficiency.
机译:检查是制造系统中质量控制的重要组成部分。由于照明设备引起的亮度和对比度,一些边缘难以提取。为了解决这个问题,提出了一种改进的更快的R-CNN算法。基于原始框架,锚点通过聚类优化,ROI汇集由ROI对齐,以提高砂包装缺陷的检测能力。在发动机表面的图像数据集上训练和测试,验证算法以提供高精度和效率的缺陷的类型和位置。

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