Title :
Texture Structure Classification and Depth Estimation using Multi-Scale Local Autocorrelation Features
Author :
Kang, Yousun ; Hasegawa, Osamu ; Nagahashi, Hiroshi
Author_Institution :
Tokyo Institute of Technology
Abstract :
While some image textures can be changed with scale, others cannot. We focus on a multi-scale features of determing the sensitivity of the texture intensity to change. This paper presents a new method of texture structure classification and depth estimation using multi-scale features extracted from a higher order of the local autocorrelation functions. Multi-scale features consist of the meansand variances of distributions, which are extracted from theautocorrelation feature vectors according to multi-level scale. In order to reduce dimensional feature vectors, we employ the Principal Component Analysis (PCA) in the autocorrelation feature space. Each training image texture makes its own multi-scale model in a reduced PCA feature space, and the test of the texture image is projected in the homogeneous PCA space of the training data. The experimental results show that the proposed multi-scale feature can be utilized notonly for texture classification, but also depth estimation in two dimensional images with texture gradients.
Keywords :
Autocorrelation; Computer vision; Feature extraction; Image analysis; Image recognition; Image segmentation; Image texture; Image texture analysis; Laboratories; Principal component analysis; Depth estimation; Local autocorrelation; Multi-scale feature; Texture classification;
Conference_Titel :
Computer Vision and Pattern Recognition Workshop, 2003. CVPRW '03. Conference on
Conference_Location :
Madison, Wisconsin, USA
Print_ISBN :
0-7695-1900-8
DOI :
10.1109/CVPRW.2003.10067