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Learning Discriminative Video Representations Using Adversarial Perturbations

机译:使用对抗性摄动学习判别式视频表示

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Adversarial perturbations are noise-like patterns that can subtly change the data, while failing an otherwise accurate classifier, fn this paper, we propose to use such perturbations for improving the robustness of video representations. To this end, given a well-trained deep model for per-frame video recognition, we first generate adversarial noise adapted to this model. Using the original data features from the full video sequence and their perturbed counterparts, as two separate bags, we develop a binary classification problem that learns a set of discriminative hyperplanes - as a subspace - that will separate the two bags from each other. This subspace is then used as a descriptor for the video, dubbed discriminative subspace pooling. As the perturbed features belong to data classes that are likely to be confused with the original features, the discriminative subspace will characterize parts of the feature space that are more representative of the original data, and thus may provide robust video representations. To learn such descriptors, we formulate a subspace learning objective on the Stiefel manifold and resort to Riemannian optimization methods for solving it efficiently. We provide experiments on several video datasets and demonstrate state-of-the-art results.
机译:对抗性摄动是类似噪声的模式,可以巧妙地更改数据,而在没有其他精确分类器的情况下,本文提出,我们建议使用此类摄动来提高视频表示的鲁棒性。为此,给定一个训练有素的用于每帧视频识别的深度模型,我们首先会生成适合该模型的对抗性噪声。使用来自完整视频序列的原始数据特征及其受扰的对应物,作为两个单独的包,我们开发了一个二元分类问题,该问题学习了一组有区别的超平面-作为子空间-将两个包彼此分开。然后将此子空间用作视频的描述符,称为区分性子空间池。由于被扰动的特征属于可能与原始特征混淆的数据类,因此判别子空间将表征特征空间中更能代表原始数据的部分,从而可以提供鲁棒的视频表示。为了学习此类描述符,我们在Stiefel流形上制定了子空间学习目标,并采用黎曼优化方法有效地解决了该问题。我们提供了一些视频数据集的实验,并展示了最新的结果。

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