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TransNet: Linkage Recognition with Contextual Nexus for Hard Object

机译:TransNet:用于硬对象的上下文关联的链接识别

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One of the major challenges in object recognition is to propose a structure with highly performance of overlapping, small and misclassification objects, called hard object recognition. There is a contextual nexus among the spatial location and geometric characteristics of objects, which we find is essential to the recognition efficacy. We propose regress connection, nexus calculation module and linkage loss, which are contained in an improving design TransNet framework. It can not only demonstrates the interactivity of explicit nexus between objects, but also achieve better results through the integration of two mainstream methods. Adjusting the training attention through linkage loss function, thus significantly enhance the performance of hard objects. The experiment results show that our method achieves remarkable performance on PASCAL VOC2012 and MS COCO data set. Also, the head network is capable of integrating with region-based methods and gains better performance.
机译:对象识别的主要挑战之一是提出一种具有高性能的重叠,小型和错误分类对象的结构,称为硬对象识别。在对象的空间位置和几何特征之间存在上下文关联,我们发现这对于识别效果至关重要。我们提出了回归连接,关系计算模块和链接损失,这些都包含在改进的设计TransNet框架中。它不仅可以演示对象之间显式关系的交互性,而且可以通过两种主流方法的集成获得更好的结果。通过链接丢失功能调整训练注意力,从而显着提高硬物的性能。实验结果表明,该方法在PASCAL VOC2012和MS COCO数据集上均取得了卓越的性能。而且,头部网络能够与基于区域的方法集成,并获得更好的性能。

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