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A Forest from the Trees: Generation through Neighborhoods

机译:树上的森林:通过邻居一代

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In this work, we propose to learn a generative model using both learned features (through a latent space) and memories (through neighbors). Although human learning makes seamless use of both learned perceptual features and instance recall, current generative learning paradigms only make use of one of these two components. Take, for instance, flow models, which learn a latent space that follows a simple distribution. Conversely, kernel density techniques use instances to shift a simple distribution into an aggregate mixture model. Here we propose multiple methods to enhance the latent space of a flow model with neighborhood information, Not only does our proposed framework represent a more human-like approach by leveraging both learned features and memories, but it may also be viewed as a step forward in non-parametric methods. In addition, our proposed framework allows the user to easily control the properties of generated samples by targeting samples based on neighbors. The efficacy of our model is shown empirically with standard image datasets. We observe compelling results and a significant improvement over baselines. Combined further with a contrastive training mechanism, our proposed methods can effectively perform non-parametric novelty detection.
机译:在这项工作中,我们建议使用学习功能(通过潜在空间)和存储器(通过邻居)来学习生成模型。虽然人类学习使学习的感知特征和实例召回的无缝使用,但是当前的生成学习范例仅利用这两个组件中的一个。例如,采用流量模型,该模型学习遵循简单分布的潜在空间。相反,内核密度技术使用实例将简单的分布转移到聚合混合模型中。在这里,我们提出了多种方法来增强流程模型的潜像与邻域信息,不仅通过利用学习的特征和存储器来代表更为人格的方法,而且还可以被视为前进的一步非参数方法。此外,我们提出的框架允许用户通过基于邻居定位样本来容易地控制所生成的样本的属性。我们的模型的功效与标准图像数据集一起显示。我们观察到引人注目的结果和基于基线的显着改进。再与对比训练机制相结合,我们提出的方法可以有效地执行非参数性新颖性检测。

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