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Picking Deep Filter Responses for Fine-Grained Image Recognition

机译:选择深度过滤器响应以进行细粒度的图像识别

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Recognizing fine-grained sub-categories such as birds and dogs is extremely challenging due to the highly localized and subtle differences in some specific parts. Most previous works rely on object / part level annotations to build part-based representation, which is demanding in practical applications. This paper proposes an automatic fine-grained recognition approach which is free of any object / part annotation at both training and testing stages. Our method explores a unified framework based on two steps of deep filter response picking. The first picking step is to find distinctive filters which respond to specific patterns significantly and consistently, and learn a set of part detectors via iteratively alternating between new positive sample mining and part model retraining. The second picking step is to pool deep filter responses via spatially weighted combination of Fisher Vectors. We conditionally pick deep filter responses to encode them into the final representation, which considers the importance of filter responses themselves. Integrating all these techniques produces a much more powerful framework, and experiments conducted on CUB-200-2011 and Stanford Dogs demonstrate the superiority of our proposed algorithm over the existing methods.
机译:由于某些特定部分的高度局限性和细微差别,因此识别鸟和狗等细粒度子类别非常具有挑战性。先前的大多数工作都依靠对象/零件级别的注释来构建基于零件的表示,这在实际应用中是非常需要的。本文提出了一种自动细粒度识别方法,该方法在训练和测试阶段都没有任何对象/零件注释。我们的方法基于深度过滤器响应选择的两个步骤探索了一个统一的框架。第一步是找到与众不同的滤镜,这些滤镜可以对特定模式进行显着且一致的响应,并通过在新的正样本挖掘和零件模型再训练之间迭代地交替学习一组零件检测器。第二个选择步骤是通过Fisher向量的空间加权组合来汇总深层过滤器响应。我们有条件地选择深层过滤器响应以将其编码为最终表示形式,这考虑了过滤器响应本身的重要性。集成所有这些技术会产生一个功能更强大的框架,并且在CUB-200-2011和Stanford Dogs上进行的实验证明了我们提出的算法优于现有方法的优势。

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