We introduce a novel topological formulation for contour grouping. Our grouping criterion, called untangling cycles, exploits the inherent topological 1D structure of salient contours to extract them from the otherwise 2D image clutter. To define a measure for topological classification robust to clutter and broken edges, we use a graph formulation instead of the standard computational topology. The key insight is that a pronounced 1D contour should have a clear ordering of edgels, to which all graph edges adhere, and no long range entanglements persist. Finding the contour grouping by optimizing these topological criteria is challenging. We introduce a novel concept of circular embedding to encode this combinatorial task. Our solution lead...
Posch S, Schlüter D. Perceptual Grouping using Markov Random Fields and Cue Integration of Contour a...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
Contour trees are used when high-dimensional data are preprocessed for efficient extraction of isoco...
We introduce a novel topological formulation for contour grouping. Our grouping criterion, called un...
Contours are one dimensional curves which may correspond to meaningful entities such as object bound...
We describe in this paper a network that performs grouping of image contours. The input to the net a...
We describe in this paper a network that performs grouping of image con-tours. The input to the net ...
Humans have an amazing ability to localize and recognize object shapes from nat-ural images with var...
Convexity represents an important principle of grouping in visual perceptual organization. This pape...
Humans have an amazing ability to localize and recognize object shapes from natural images with vari...
This paper introduces a new edge-grouping method to detect perceptually salient structures in noisy ...
This paper aims to extract salient closed contours from an image. For this vision task, both region ...
The problem of computing closed bounding contours from a visual image is addressed. The approach is ...
The problem under consideration in this dissertation is achieving salient object segmentation of nat...
AbstractThe human brain manages to correctly interpret almost every visual image it receives from th...
Posch S, Schlüter D. Perceptual Grouping using Markov Random Fields and Cue Integration of Contour a...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
Contour trees are used when high-dimensional data are preprocessed for efficient extraction of isoco...
We introduce a novel topological formulation for contour grouping. Our grouping criterion, called un...
Contours are one dimensional curves which may correspond to meaningful entities such as object bound...
We describe in this paper a network that performs grouping of image contours. The input to the net a...
We describe in this paper a network that performs grouping of image con-tours. The input to the net ...
Humans have an amazing ability to localize and recognize object shapes from nat-ural images with var...
Convexity represents an important principle of grouping in visual perceptual organization. This pape...
Humans have an amazing ability to localize and recognize object shapes from natural images with vari...
This paper introduces a new edge-grouping method to detect perceptually salient structures in noisy ...
This paper aims to extract salient closed contours from an image. For this vision task, both region ...
The problem of computing closed bounding contours from a visual image is addressed. The approach is ...
The problem under consideration in this dissertation is achieving salient object segmentation of nat...
AbstractThe human brain manages to correctly interpret almost every visual image it receives from th...
Posch S, Schlüter D. Perceptual Grouping using Markov Random Fields and Cue Integration of Contour a...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
Contour trees are used when high-dimensional data are preprocessed for efficient extraction of isoco...