Improved Method Based on Faster R-CNN Network Optimization for Small Target Surface Defects Detection of Aluminum Profile

Yanxi Yang, Qiao Sun, Dongkun Zhang, Linchang Shao, Xingkun Song, Xinyu Li
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引用次数: 4

Abstract

Aiming at the problems of missed detection and false detection of small target defects on the surface of aluminum profiles, an improved Faster R-CNN deep learning network is proposed to detect paint bubbles and dirty spots. Firstly, create a small target data set for these two types of defects, redesigning the anchor ratio, and then use ROI-Align instead of ROI-Pooling to obtain more accurate defects location information, and finally use Soft-NMS algorithm to replace NMS Algorithm to eliminate redundant prediction frames, which improves the detection accuracy of small target defects. The experiment shows that the improved network has an AP value of 64.06% for paint bubbles defects, which is 12.99 % higher than the original Faster R-CNN network, and the AP value of dirty spots defects is up to 82.98%, which is 6.59% higher than the original Faster R-CNN network.
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基于更快R-CNN网络优化的铝型材小目标表面缺陷检测改进方法
针对铝型材表面小目标缺陷的漏检和误检问题,提出了一种改进的Faster R-CNN深度学习网络,用于油漆气泡和脏斑的检测。首先针对这两类缺陷创建一个小目标数据集,重新设计锚定比,然后用ROI-Align代替ROI-Pooling获得更准确的缺陷定位信息,最后用Soft-NMS算法代替NMS算法消除冗余预测帧,提高了小目标缺陷的检测精度。实验表明,改进后的网络对油漆气泡缺陷的AP值为64.06%,比原Faster R-CNN网络提高了12.99%,对脏斑缺陷的AP值高达82.98%,比原Faster R-CNN网络提高了6.59%。
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