论文标题

显着驱动的班级印象,用于深度神经网络的特征可视化

Saliency-driven Class Impressions for Feature Visualization of Deep Neural Networks

论文作者

Addepalli, Sravanti, Tamboli, Dipesh, Babu, R. Venkatesh, Banerjee, Biplab

论文摘要

在本文中,我们提出了一种无数据的方法,从分类器的内存中提取每个类的印象。深度学习制度使分类器从培训数据中提取给定类别的不同模式(或特征),这是他们推广到看不见数据的基础。在将这些模型部署在关键应用程序上之前,可视化被认为对分类至关重要的功能是有利的。现有的可视化方法开发了由背景和前景特征组成的高置信图像。这使得很难判断给定班级的关键特征是什么。在这项工作中,我们提出了一种以显着性驱动的方法来可视化对给定任务最重要的判别特征。现有方法的另一个缺点是,通过创建给定类的多个实例来增加生成的可视化的信心。我们将算法限制为每个图像开发单个对象,这有助于进一步提取高置信度的特征,并带来更好的可视化。我们进一步证明了负面图像的产生,作为两个或多个类别的自然融合图像。

In this paper, we propose a data-free method of extracting Impressions of each class from the classifier's memory. The Deep Learning regime empowers classifiers to extract distinct patterns (or features) of a given class from training data, which is the basis on which they generalize to unseen data. Before deploying these models on critical applications, it is advantageous to visualize the features considered to be essential for classification. Existing visualization methods develop high confidence images consisting of both background and foreground features. This makes it hard to judge what the crucial features of a given class are. In this work, we propose a saliency-driven approach to visualize discriminative features that are considered most important for a given task. Another drawback of existing methods is that confidence of the generated visualizations is increased by creating multiple instances of the given class. We restrict the algorithm to develop a single object per image, which helps further in extracting features of high confidence and also results in better visualizations. We further demonstrate the generation of negative images as naturally fused images of two or more classes.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源