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Understanding Convolutional Neural Networks in Terms of Category-Level Attributes

机译:在类别级属性方面了解卷积神经网络

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It has been recently reported that convolutional neural networks (CNNs) show good performances in many image recognition tasks. They significantly outperform the previous approaches that are not based on neural networks particularly for object category recognition. These performances are arguably owing to their ability of discovering better image features for recognition tasks through learning, resulting in the acquisition of better internal representations of the inputs. However, in spite of the good performances, it remains an open question why CNNs work so well and/or how they can learn such good representations. In this study, we conjecture that the learned representation can be interpreted as category-level attributes that have good properties. We conducted several experiments by using the dataset AwA (Animals with Attributes) and a CNN trained for ILSVRC-2012 in a fully supervised setting to examine this conjecture. We report that there exist units in the CNN that can predict some of the 85 semantic attributes fairly accurately, along with a detailed observation that this is true only for visual attributes and not for non-visual ones. It is more natural to think that the CNN may discover not only semantic attributes but non-semantic ones (or ones that are difficult to represent as a word). To explore this possibility, we perform zero-shot learning by regarding the activation pattern of upper layers as attributes describing the categories. The result shows that it outperforms the state-of-the-art with a significant margin.
机译:最近报道,卷积神经网络(CNNS)在许多图像识别任务中表现出良好的性能。它们显着优于以前基于神经网络的先前方法,特别是对于对象类别识别。由于它们通过学习发现识别任务的更好图像特征的能力,因此可以说出这些性能,导致获取输入的更好的内部表示。然而,尽管有了好的表现,但它仍然是为什么CNNS工作如此良好和/或如何学习如此良好的陈述的原因是一个开放的问题。在本研究中,我们猜测学习的表示可以被解释为具有良好属性的类别级别属性。我们通过使用DataSet AWA(具有属性的动物)和用于ILSVRC-2012的CNN在完全监督的设置中进行了多个实验,以检查该猜想。我们报告的是,CNN中存在单位,可以相当准确地预测85个语义属性,以及详细观察,即这只适用于视觉属性而不是非视觉属性。认为CNN可能不仅可以发现语义属性但非语义(或难以表示为单词的人)是更自然的。为了探讨这种可能性,我们通过关于上层的激活模式作为描述类别的属性来执行零拍摄学习。结果表明,它具有显着的边缘的最先进的现实。

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