2022
DOI: 10.1155/2022/3248722
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Improved Faster R-CNN Based Surface Defect Detection Algorithm for Plates

Abstract: Defect recognition plays an important part of panel inspection, and most of the current manual inspection methods are used, but the recognition efficiency and recognition accuracy are low. The Fast-Convolutional Neural Network (Faster R-CNN) algorithm is improved, and a surface defect detection algorithm based on the improved Faster R-CNN is proposed. Firstly, the algorithm improves the bilateral filtering algorithm to smooth the image texture background. Subsequently, a feature pyramid network with a shape-va… Show more

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Cited by 14 publications
(7 citation statements)
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References 23 publications
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“…Gao proposed a new TL-ResNet34 deep learning model to detect wood knot defects [ 45 ]. Yang proposed a method based on a single shot multibox detector algorithm to detect wood surface defects [ 46 ]. Xia [ 47 ] modified the original Faster-RCNN for veneer detection by improving the bilateral filtering algorithm to smooth the image texture background and a feature pyramid network with a shape-variable convolutional ResNet50 network as well as a region of interest align algorithm.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Gao proposed a new TL-ResNet34 deep learning model to detect wood knot defects [ 45 ]. Yang proposed a method based on a single shot multibox detector algorithm to detect wood surface defects [ 46 ]. Xia [ 47 ] modified the original Faster-RCNN for veneer detection by improving the bilateral filtering algorithm to smooth the image texture background and a feature pyramid network with a shape-variable convolutional ResNet50 network as well as a region of interest align algorithm.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Bayraktar et al [5] leveraged the strengths of GANs while addressing the limitations of conventional approaches, ultimately improving the overall performance of surface defect detection. Xia et al [6] proposed an innovative defect detection approach utilizing Faster R-CNN specifically designed for identifying plate surface imperfections. A bilateral filtering algorithm was used, in which a shape-adaptive convolution with ResNet50 was applied to obtain defect semantic feature mapping in the feature pyramid network.…”
Section: Introductionmentioning
confidence: 99%
“…Zeng et al [22] introduced FPN into the Fast R-CNN model to inspect the cotton-packaging defects with the mAP value increased by 9.08% compared with the original network. On the basis of Faster RCNN-FPN, Xia et al [23] replaced ROI Pooling with ROI Align to detect polarizer surface defects, achieving an accuracy of up to 95%. Similarly, the suggested model has been successfully applied to aircraft-target detection [24].…”
Section: Introductionmentioning
confidence: 99%