Visual grouping is a key mechanism in human scene perception. There, it belongs to the subconscious, early processing and is key prerequisite for other high level tasks such as recognition. In this paper, we introduce an efficient, realtime capable algorithm which likewise agglomerates a valuable hierarchical clustering of a scene, while using purely local appearance statistics. To speed up the processing, first we subdivide the image into meaningful, atomic segments using a fast Watershed transform. Starting from there, our rapid, agglomerative clustering algorithm prunes and maintains the connectivity graph between clusters to contain only such pairs, which directly touch in the image domain and are reciprocal nearest neighbors (RNN) wrt....
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
We study an agglomerative clustering problem motivated by visualizing disjoint glyphs (represented ...
In this paper, the problem of extracting and grouping image features from complex scenes is solved b...
We consider the problem of clustering under the constraint that data points in the same cluster are ...
Clustering forms a major part of showing different relations between data points. Real-time clusteri...
Abstract-The problem of segmenting images of objects with smooth surfaces is considered. The algorit...
Abstract:- In this paper, we propose an efficient and effective clustering method that requires to s...
Abstract- This paper presents a new iterative algorithm for automatically generating a hierarchical ...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
Representative-based clustering algorithms are quite popular due to their relative high speed and be...
We introduce a method for unsupervised clustering of images of 3D objects. Our method examines the s...
In this paper, we propose a scene clustering algorithm which uses straight line features. Scenes are...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
An agglomerative clustering algorithm merges the most similar pair of clusters at every iteration. T...
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
We study an agglomerative clustering problem motivated by visualizing disjoint glyphs (represented ...
In this paper, the problem of extracting and grouping image features from complex scenes is solved b...
We consider the problem of clustering under the constraint that data points in the same cluster are ...
Clustering forms a major part of showing different relations between data points. Real-time clusteri...
Abstract-The problem of segmenting images of objects with smooth surfaces is considered. The algorit...
Abstract:- In this paper, we propose an efficient and effective clustering method that requires to s...
Abstract- This paper presents a new iterative algorithm for automatically generating a hierarchical ...
Clustering algorithms – a field of data mining – aims at finding a grouping structure in the input d...
Representative-based clustering algorithms are quite popular due to their relative high speed and be...
We introduce a method for unsupervised clustering of images of 3D objects. Our method examines the s...
In this paper, we propose a scene clustering algorithm which uses straight line features. Scenes are...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
We propose an algorithm that groups points similarly to how human observers do. It is simple, totall...
An agglomerative clustering algorithm merges the most similar pair of clusters at every iteration. T...
Abstract. In many scientific, engineering or multimedia applications, complex distance functions are...
We study an agglomerative clustering problem motivated by visualizing disjoint glyphs (represented ...
In this paper, the problem of extracting and grouping image features from complex scenes is solved b...