We consider the problem of finding points of interest along local curves of binary images. Information theoretic vector quantization is a clustering algorithm that shifts cluster centers towards the modes of principal curves of a data set. Its runtime characteristics, however, do not allow for efficient processing of many data points. In this paper, we show how to solve this problem when dealing with data on a 2D lattice. Borrowing concepts from signal processing, we adapt information theoretic clustering to the quantization of binary images and gain significant speedup
This paper focuses on the problem of learning binary codes for efficient retrieval of high-dimension...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Abstract. In this paper we develop an information-theoretic approach for pairwise clustering. The La...
We consider the problem of clustering data that reside on discrete, low dimensional lattices. Canoni...
We consider the problem of clustering data that reside on discrete, low dimensional lattices. Canoni...
In this paper, an information theoretic framework for image segmentation is presented. This approach...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
Clustering algorithms are intensively used in the image analysis field in compression, segmentation,...
The ability to characterize the color content of natural imagery is an important application of imag...
Abstract-Aspects of topology and geometry are used in analyzing continuous and discrete binary image...
This paper presents a new quantization method for color images. It uses a local error optimization ...
In this paper we investigate the problem of codebook generation for Vector Quantizers which optimize...
We introduce a new, non-parametric and principled, distance based clustering method. This method com...
In computer vision, objects such as local features, images and video sequences are often represented...
Clustering techniques aim organizing data into groups whose members are similar. A key element of th...
This paper focuses on the problem of learning binary codes for efficient retrieval of high-dimension...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Abstract. In this paper we develop an information-theoretic approach for pairwise clustering. The La...
We consider the problem of clustering data that reside on discrete, low dimensional lattices. Canoni...
We consider the problem of clustering data that reside on discrete, low dimensional lattices. Canoni...
In this paper, an information theoretic framework for image segmentation is presented. This approach...
Abstract. The process of representing a large data set with a smaller number of vectors in the best ...
Clustering algorithms are intensively used in the image analysis field in compression, segmentation,...
The ability to characterize the color content of natural imagery is an important application of imag...
Abstract-Aspects of topology and geometry are used in analyzing continuous and discrete binary image...
This paper presents a new quantization method for color images. It uses a local error optimization ...
In this paper we investigate the problem of codebook generation for Vector Quantizers which optimize...
We introduce a new, non-parametric and principled, distance based clustering method. This method com...
In computer vision, objects such as local features, images and video sequences are often represented...
Clustering techniques aim organizing data into groups whose members are similar. A key element of th...
This paper focuses on the problem of learning binary codes for efficient retrieval of high-dimension...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Abstract. In this paper we develop an information-theoretic approach for pairwise clustering. The La...