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CNN Fixations: An Unraveling Approach to Visualize the Discriminative Image Regions

机译:CNN固定装置:一种将判别性图像区域可视化的分解方法

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Deep convolutional neural networks (CNNs) have revolutionized the computer vision research and have seen unprecedented adoption for multiple tasks, such as classification, detection, and caption generation. However, they offer little transparency into their inner workings and are often treated as black boxes that deliver excellent performance. In this paper, we aim at alleviating this opaqueness of CNNs by providing visual explanations for the network's predictions. Our approach can analyze a variety of CNN-based models trained for computer vision applications, such as object recognition and caption generation. Unlike the existing methods, we achieve this via unraveling the forward pass operation. The proposed method exploits feature dependencies across the layer hierarchy and uncovers the discriminative image locations that guide the network's predictions. We name these locations CNN fixations, loosely analogous to human eye fixations. Our approach is a generic method that requires no architectural changes, additional training, or gradient computation, and computes the important image locations (CNN fixations). We demonstrate through a variety of applications that our approach is able to localize the discriminative image locations across different network architectures, diverse vision tasks, and data modalities.
机译:深度卷积神经网络(CNN)彻底改变了计算机视觉研究,并实现了前所未有的多项任务采用,例如分类,检测和字幕生成。但是,它们内部工作几乎不透明,通常被视为提供出色性能的黑匣子。在本文中,我们旨在通过为网络的预测提供直观的解释来减轻CNN的这种不透明性。我们的方法可以分析针对计算机视觉应用(例如对象识别和字幕生成)而受过训练的各种基于CNN的模型。与现有方法不同,我们通过分解正向通过操作来实现此目的。所提出的方法利用了跨层层次的特征依赖性,并揭示了指导网络预测的可区分图像位置。我们将这些位置命名为CNN注视,大致类似于人眼注视。我们的方法是一种通用方法,不需要更改架构,进行额外的训练或进行梯度计算,并且可以计算重要的图像位置(CNN固定)。我们通过各种应用程序证明了我们的方法能够跨不同的网络体系结构,多样化的视觉任务和数据模式来定位具有区别性的图像位置。

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