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Multisize plate detection algorithm based on improved Mask RCNN

机译:基于改进Mask RCNN的多尺寸板检测算法

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The sorting of plates is an indispensable part of the plate processing production line. In order to achieve plate detection in complex detection scenarios, a multisize plate detection algorithm based on improved Mask RCNN is proposed. The model fusion method is used to introduce the DenseNet network structure to optimize the feature transfer path to make feature extraction more efficient. At the same time, the boundary distance constraint is added to the segmentation loss function, which makes the model more precise for the target with high stacking complexity and fuzzy boundary information. The experimental results show that the improved Mask RCNN performance is significantly improved, compared with other models, it achieves an optimization effect with an average accuracy of more than 98%.
机译:板的分选是板加工生产线的不可或缺的一部分。为了在复杂检测场景中实现板检测,提出了一种基于改进的掩模RCNN的多化板检测算法。模型融合方法用于引入DENSENET网络结构以优化特征传输路径,使特征提取更有效。同时,将边界距离约束添加到分段损耗函数,这使得模型更精确地具有高堆叠复杂度和模糊边界信息的目标。实验结果表明,与其他型号相比,改进的面膜rcnn性能显着提高,其实现了平均精度超过98%的优化效果。

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