论文标题

在紧凑的潜在空间下,一级新颖性检测的判别多层重建

Discriminative Multi-level Reconstruction under Compact Latent Space for One-Class Novelty Detection

论文作者

Park, Jaewoo, Jung, Yoon Gyo, Teoh, Andrew Beng Jin

论文摘要

在一级新颖性检测中,模型仅在课堂数据上学习以列出郊外实例。 AutoCoder(AE)变体的目的是将课堂数据专门重新构造,从而通过重建误差将课堂上的课堂与外层区分开来。但是,以不当方式进行紧凑的建模可能会崩溃,因此会导致性能恶化,从而崩溃了课堂数据的潜在表示。此外,要正确测量高维数据的重建误差,需要一个度量标准,以捕获数据的高级语义。为此,我们提出了歧视性紧凑型AE(DCAE),该AE(DCAE)同时学习了课堂数据的紧凑和无塌陷的潜在表示,从而将它们重新构建精细和专门。在DCAE中,(a)我们通过通过生成对抗性网的内部判别层重构来迫使紧凑的潜在空间来代表跨越的数据。 (b)基于深层编码器打开设定风险的脆弱性,将跨课程实例编码到相同的紧凑型潜在空间中,并在不牺牲课堂数据重建质量的情况下重建不良。 (c)在推断中,重建误差是通过一种新的度量来衡量的,该指标基于内部歧视器捕获的类语义来计算查询及其重建之间的差异。公共图像数据集的广泛实验验证了我们提出的模型对新颖性和对抗性示例检测的有效性,从而提供了最先进的性能。

In one-class novelty detection, a model learns solely on the in-class data to single out out-class instances. Autoencoder (AE) variants aim to compactly model the in-class data to reconstruct it exclusively, thus differentiating the in-class from out-class by the reconstruction error. However, compact modeling in an improper way might collapse the latent representations of the in-class data and thus their reconstruction, which would lead to performance deterioration. Moreover, to properly measure the reconstruction error of high-dimensional data, a metric is required that captures high-level semantics of the data. To this end, we propose Discriminative Compact AE (DCAE) that learns both compact and collapse-free latent representations of the in-class data, thereby reconstructing them both finely and exclusively. In DCAE, (a) we force a compact latent space to bijectively represent the in-class data by reconstructing them through internal discriminative layers of generative adversarial nets. (b) Based on the deep encoder's vulnerability to open set risk, out-class instances are encoded into the same compact latent space and reconstructed poorly without sacrificing the quality of in-class data reconstruction. (c) In inference, the reconstruction error is measured by a novel metric that computes the dissimilarity between a query and its reconstruction based on the class semantics captured by the internal discriminator. Extensive experiments on public image datasets validate the effectiveness of our proposed model on both novelty and adversarial example detection, delivering state-of-the-art performance.

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