基于多分辨率二叉形状树的高效二维聚类

Csaba Beleznai, A. Zweng, T. Netousek, J. Birchbauer
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引用次数: 3

摘要

离散二维分布的分析是计算机视觉中的一项相关任务,因为许多中间表示是根据二维映射生成的。概率推理或判别分类的响应通常以二维数字图像的形式产生多模态分布,其中具有不同属性(如规模,方向和形状)的结构的准确和计算效率描述是一个挑战。最简单的例子是非最大抑制,其中典型的中心环绕结构元件的响应作为滤波器用于抑制杂散检测响应。在本文中,我们提出了一个简单的方案,该方案能够在局部二进制形状模型的驱动下描绘出围绕局部密度最大值的任意分布的形状,从而得到一致的目标假设。我们采用了一种从粗到精的分析方案,其中学习到的二进制形状的增加分辨率指导形状匹配过程。我们展示了在噪声概率占用图中描绘紧凑簇的适用性,以及在文本检测器响应图中检测结构一致的线结构的能力。结果与其他空间分组方案进行了比较,结果表明该方法具有快速、准确的圈定性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-resolution binary shape tree for efficient 2D clustering
The analysis of discrete two-dimensional distributions is a relevant task in computer vision, since many intermediate representations are generated inform of a two-dimensional map. Probabilistic inference or the response of discriminative classification often yield multi-modal distributions in form of 2D digital images, where the accurate and computationally efficient delineation of structures with varying attributes such as scale, orientation and shape represents a challenge. The simplest example is non-maximum suppression, where typically the response of a center-surround structural element applied as a filter is used to suppress spurious detection responses. In this paper we propose a simple scheme which is capable to delineate the shape of arbitrary distributions around a local density maximum driven by a local binary shape model, resulting in consistent object hypotheses. We employ a coarse-to-fine analysis scheme where learned binary shapes of increasing resolution guide a shape matching process. We demonstrate applicability for delineating compact clusters in a noisy probabilistic occupancy map, and the capability for detecting structurally consistent line structures in a text detector response map. Results are compared to other spatial grouping schemes and obtained results demonstrate a fast and accurate delineation performance.
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