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Evaluating CNNs on the Gestalt Principle of Closure

机译:基于格式塔封闭原则评估CNN

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Deep convolutional neural networks (CNNs) are widely known for their outstanding performance in classification and regression tasks over high-dimensional data. This made them a popular and powerful tool for a large variety of applications in industry and academia. Recent publications show that seemingly easy classification tasks (for humans) can be very challenging for state of the art CNNs. An attempt to describe how humans perceive visual elements is given by the Gestalt principles. In this paper we evaluate AlexNet and GoogLeNet regarding their performance on classifying the correctness of the well known Kanizsa triangles and triangles where sections of the edges were removed. Both types heavily rely on the Gestalt principle of closure. Therefore we created various datasets containing valid as well as invalid variants of the described triangles. Our findings suggest that perceiving objects by utilizing the principle of closure is very challenging for the applied network architectures but they appear to adapt to the effect of closure.
机译:深卷积神经网络(CNN)以其在高维数据的分类和回归任务中的出色表现而闻名。这使它们成为工业和学术界广泛应用的流行而强大的工具。最近的出版物表明,(对于人类而言)看似简单的分类任务对于最新的CNN来说可能是非常具有挑战性的。格式塔定律试图描述人类如何看待视觉元素。在本文中,我们评估了AlexNet和GoogLeNet在分类著名的Kanizsa三角形和去除了边缘部分的三角形的正确性方面的性能。两种类型都严重依赖格式塔闭包原理。因此,我们创建了包含所描述三角形的有效和无效变体的各种数据集。我们的发现表明,对于应用的网络体系结构,利用闭合原理来感知对象是非常具有挑战性的,但是它们似乎适应了闭合效果。

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