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Soldered Dots Detection of Automobile Door Panels based on Faster R-CNN Model

机译:基于更快的R-CNN模型,焊接点检测汽车门板

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This paper mainly introduces a Faster R-CNN algorithm to identify the soldered dots of automobile door panels. It compares the effect of state-of-the-art algorithm on identification of soldered dots and proposes a better calculating method for the project. The dataset in this research was a collection of more than 800 unwelded inner door panels collected by cameras, including 500 photos of entire door panels and 300 partials. Detection of soldered dots is based on Faster R-CNN, extracting the feature maps from image via the VGG16 convolution neural network. Region proposal networks generate region proposals for feature maps. ROI pooling extracts proposal feature maps from the input feature maps and proposals. The fully connected layer utilizes the proposal feature maps to calculate the classes of proposals, while the bounding box regressor obtains the exact location of predicted boxes. The experimental results show that both Faster R-CNN and YOLOv3 can be applied to small soldered dots detection. YOLOv3 has a faster speed and it is suitable for real-time detection. Faster R-CNN has high detection accuracy and it is suitable for non-real-time high-precision detection. In addition, Faster R-CNN is more generalized which should be given priority in complex scenarios.
机译:本文主要介绍了一种更快的R-CNN算法,用于识别汽车门板的焊接点。它比较了最先进的算法对焊接点的识别的影响,并提出了更好的项目计算方法。该研究中的数据集是由摄像机收集的800多个未化合物内门板的集合,包括整个门板和300张局部的500张照片。焊接点的检测基于更快的R-CNN,通过VGG16卷积神经网络从图像中提取特征映射。区域提案网络为特征映射生成区域提案。 ROI汇集提取物提案提案功能映射来自输入特征映射和提案。完全连接的图层利用该提案功能映射来计算提案的类,而边界框回归主获取预测框的确切位置。实验结果表明,均匀的R-CNN和YOLOV3可以应用于小焊点检测。 YOLOV3具有更快的速度,适用于实时检测。更快的R-CNN具有高检测精度,适用于非实时高精度检测。此外,更快的R-CNN是更广泛的,这应该在复杂的情景中优先考虑优先权。

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