Multiscale directional filter bank with applications to structured and random texture retrieval
作者:
Highlights:
•
摘要
In this paper, multiscale directional filter bank (MDFB) is investigated for texture characterization and retrieval. First, the problem of aliasing in decimated bandpass images on directional decomposition is addressed. MDFB is then designed to suppress the aliasing effect as well as to minimize the reduction in frequency resolution. Second, an entropy-based measure on energy signatures is proposed to classify structured and random textures. With the use of this measure for texture pre-classification, an optimized retrieval performance can be achieved by selecting the MDFB-based method for retrieving structured textures and a statistical or model-based method for retrieving random textures. In addition, a feature reduction scheme and a rotation-invariant conversion method are developed. The former is developed so as to find the most representative features while the latter is developed to provide a set of rotation-invariant features for texture characterization. Experimental works confirm that they are effective for texture retrieval.
论文关键词:Texture characterization,Texture retrieval,Directional filter bank,Multiscale directional filter bank,Rotation-invariant features
论文评审过程:Received 15 July 2005, Revised 16 June 2006, Accepted 31 July 2006, Available online 2 October 2006.
论文官网地址:https://doi.org/10.1016/j.patcog.2006.07.014