论文标题
将纹理信息纳入降低高维图像的维度
Incorporating Texture Information into Dimensionality Reduction for High-Dimensional Images
论文作者
论文摘要
从天文学和文化遗产到系统生物学的许多领域,高维成像变得越来越相关。降低维度通常会促进这种高维数据的视觉探索。但是,常见的降低方法不包括图像中存在的空间信息,例如本地纹理特征,构造了低维嵌入的构造。因此,对此类数据的探索通常被分为一步,重点是属性空间,然后是针对空间信息的步骤,反之亦然。在本文中,我们提出了一种将空间邻域信息纳入基于距离的维度降低方法的方法,例如T分配的随机邻居嵌入(T-SNE)。我们通过修改与每个像素相关的高维属性向量之间的距离度量来实现这一目标,从而考虑了像素的空间邻域。基于比较图像补丁的不同方法的分类,我们探讨了许多不同的方法。我们从理论和实验的角度比较了这些方法。最后,我们通过对合成数据和两个现实世界用例的定性和定量评估来说明所提出的方法的价值。
High-dimensional imaging is becoming increasingly relevant in many fields from astronomy and cultural heritage to systems biology. Visual exploration of such high-dimensional data is commonly facilitated by dimensionality reduction. However, common dimensionality reduction methods do not include spatial information present in images, such as local texture features, into the construction of low-dimensional embeddings. Consequently, exploration of such data is typically split into a step focusing on the attribute space followed by a step focusing on spatial information, or vice versa. In this paper, we present a method for incorporating spatial neighborhood information into distance-based dimensionality reduction methods, such as t-Distributed Stochastic Neighbor Embedding (t-SNE). We achieve this by modifying the distance measure between high-dimensional attribute vectors associated with each pixel such that it takes the pixel's spatial neighborhood into account. Based on a classification of different methods for comparing image patches, we explore a number of different approaches. We compare these approaches from a theoretical and experimental point of view. Finally, we illustrate the value of the proposed methods by qualitative and quantitative evaluation on synthetic data and two real-world use cases.