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A new method in wheel hub surface defect detection: Object detection algorithm based on deep learning

机译:轮毂表面缺陷检测的一种新方法:基于深度学习的物体检测算法

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In wheel hub surface defect detection, a unified image background is required. However, it is a challenging task because of the various categories of wheel hubs, and the complicated image background of the defect areas caused by the collection of the images with the defect areas in a narrow field of vision. Compared to the traditional method, the deep learning algorithm is more robust, which doesn't need the unified image background. We use Faster-RCNN with ResNet-101 as the object detection algorithm. And our related experiments show that our deep learning method is able to detect the scratches and points on the wheel hub in an image with a complicated background, as shown in Figure5. Furthermore, the model can detect defects on any part of the wheel hub of various types, and obtain the position and the class of the defective area. Particularly, the method achieves 86.3% mAP on our own data set.
机译:在轮毂表面缺陷检测中,需要统一的图像背景。然而,由于轮毂的各种类别,并且由缺陷区域中的缺陷区域收集图像引起的缺陷区域的复杂图像背景是一个具有挑战性的任务。与传统方法相比,深度学习算法更强大,这不需要统一的图像背景。我们使用Reset-101的更快-RCNN作为对象检测算法。我们的相关实验表明,我们的深度学习方法能够检测具有复杂背景的图像中车轮集线器上的划痕和点,如图5所示。此外,模型可以检测各种类型的轮毂的任何部分上的缺陷,并获得缺陷区域的位置和类别。特别是,该方法在我们自己的数据集上实现86.3 %MAP。

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