可视化利用生成数据的潜在空间图。

IF 6.5
Yang Zhang, Jie Li, Wei Zeng
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引用次数: 0

摘要

生成模型生成的样本,称为生成样本(gs),已经成为以数据为中心的应用程序中从现实世界中收集的样本的重要补充。领域专家通常随机收集许多GSs,并手动选择一些感兴趣的应用程序。然而,该方法缺乏指导,无法在无限可生成的候选对象中找到表现出特定功能或坚持面向应用程序的度量的理想对象。这些样本通常集中在生成模型潜在空间的几个小区域,称为生成潜在空间(GLS)。本文提出了一种将GLS投影到平面上的潜在空间地图,以帮助用户定位富含理想gps的区域。我们的研究围绕着构建地图的两个挑战展开。首先,GLS中的许多GSs质量很低,对应用程序毫无用处。由于它们的不规则分布,将它们排除在预测之外是一项挑战。我们采用基于蒙特卡罗的方法来捕获用于投影的流形,其中主要分布高质量的GSs。其次,GLS是高维无界的,使投影变得复杂。我们设计了一种流形投影方法,使地图具有理想的特征,使用户可以自由地观察流形,从而达到较高的显示精度和有效的模式感知。我们进一步开发了一个集成潜在空间地图的系统,以帮助GS的选择和改进。实际案例、定量实验和领域专家的反馈证实了我们方法的可用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latent Space Map for Visual Utilization of Generated Data.

Samples produced by generative models, called Generated Samples (GSs), have become a critical supplement to those collected from the real world in data-centric applications. Domain experts typically randomly collect many GSs and manually select a few of interest for applications. However, the methodology lacks guidance to locate desirable ones that exhibit specific features or adhere to application-oriented metrics among infinite generable candidates. These samples are generally concentrated in a few small regions of the generative model's latent space, called Generative Latent Space (GLS). This paper presents Latent Space Map that projects a GLS onto a plane to help users locate regions rich in desirable GSs. Our research revolves around two challenges in constructing the map. First, many GSs in a GLS are low-quality and useless for applications. Excluding them from the projection is challenging for their irregular distribution. We employ a Monte Carlo-based method to capture a manifold for projection, where high-quality GSs are mainly distributed. Second, the GLS is high-dimensional and unbounded, complicating the projection. We design a manifold projection method that endows the map with desirable characteristics to achieve high display accuracy and effective pattern perception for users freely observing the manifold. We further develop a system integrating Latent Space Map to aid in GS selection and refinement. Real-world cases, quantitative experiments, and feedback from domain experts confirm the usability and effectiveness of our approach.

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