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Part Detector Discovery in Deep Convolutional Neural Networks

机译:零件探测器在深卷积神经网络中发现

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Current fine-grained classification approaches often rely on a robust localization of object parts to extract localized feature representations suitable for discrimination. However, part localization is a challenging task due to the large variation of appearance and pose. In this paper, we show how pre-trained convolutional neural networks can be used for robust and efficient object part discovery and localization without the necessity to actually train the network on the current dataset. Our approach called "part detector discovery" (PDD) is based on analyzing the gradient maps of the network outputs and finding activation centers spatially related to annotated semantic parts or bounding boxes. This allows us not just to obtain excellent performance on the CUB200-2011 dataset, but in contrast to previous approaches also to perform detection and bird classification jointly without requiring a given bounding box annotation during testing and ground-truth parts during training.
机译:当前的细粒度分类方法通常依赖于对象部分的稳健定位,以提取适合歧视的本地化特征表示。然而,由于外观和姿势的巨大变化,部分定位是一个具有挑战性的任务。在本文中,我们展示了预先训练的卷积神经网络如何用于稳健和有效的对象部分发现和本地化,而无需实际在当前数据集上培训网络。我们的方法称为“部件检测器发现”(PDD)是基于分析网络输出的梯度映射,并在空间上找到与带注释的语义部件或边界框的激活中心。这允许我们不仅仅是在CUB200-2011数据集上获得出色的性能,但与先前的方法相比,也要联合执行检测和鸟类分类,而无需在训练期间测试和地面真相零件期间的给定边界盒注释。

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