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DeepProposal: Hunting Objects by Cascading Deep Convolutional Layers

机译:深备:通过层叠深卷尘层来捕猎物体

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In this paper we evaluate the quality of the activation layers of a convolutional neural network (CNN) for the generation of object proposals. We generate hypotheses in a sliding-window fashion over different activation layers and show that the final convolutional layers can find the object of interest with high recall but poor localization due to the coarseness of the feature maps. Instead, the first layers of the network can better localize the object of interest but with a reduced recall. Based on this observation we design a method for proposing object locations that is based on CNN features and that combines the best of both worlds. We build an inverse cascade that, going from the final to the initial convolutional layers of the CNN, selects the most promising object locations and refines their boxes in a coarse-to-fine manner. The method is efficient, because i) it uses the same features extracted for detection, ii) it aggregates features using integral images, and iii) it avoids a dense evaluation of the proposals due to the inverse coarse-to-fine cascade. The method is also accurate; it outperforms most of the previously proposed object proposals approaches and when plugged into a CNN-based detector produces state-of-the-art detection performance.
机译:在本文中,我们评估卷积神经网络(CNN)的激活层的质量来产生对象提案。在不同的激活层上,我们在滑动窗口时生成假设,并表明最终的卷积层可以在高召回但由于特征图的粗糙度而具有较差的本地化,因此最终的卷积层可以找到感兴趣的对象。相反,网络的第一层可以更好地本地化感兴趣的对象,但召回减少。基于该观察,我们设计了一种提出基于CNN特征的对象位置的方法,并且结合了两个世界的最佳选择。我们构建一个逆级联,从最终卷积到CNN的初始卷积层,选择最有前途的物体位置,并以粗糙的方式改进其盒子。该方法是有效的,因为i)它使用了提取的相同的特征,II)使用积分图像和III的特征和III)它避免了由于较小的粗级级级级级级级级级的提案的密集评估。该方法也是准确的;它优于前面提出的大多数提议的对象建议方法以及插入基于CNN的检测器时产生最先进的检测性能。

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