Clausi David A, Deng Huang
Department of Systems Design Engineering, University of Waterloo, Waterloo, ON N2L 3G1 Canada.
IEEE Trans Image Process. 2005 Jul;14(7):925-36. doi: 10.1109/tip.2005.849319.
A design-based method to fuse Gabor filter and grey level co-occurrence probability (GLCP) features for improved texture recognition is presented. The fused feature set utilizes both the Gabor filter's capability of accurately capturing lower and mid-frequency texture information and the GLCP's capability in texture information relevant to higher frequency components. Evaluation methods include comparing feature space separability and comparing image segmentation classification rates. The fused feature sets are demonstrated to produce higher feature space separations, as well as higher segmentation accuracies relative to the individual feature sets. Fused feature sets also outperform individual feature sets for noisy images, across different noise magnitudes. The curse of dimensionality is demonstrated not to affect segmentation using the proposed the 48-dimensional fused feature set. Gabor magnitude responses produce higher segmentation accuracies than linearly normalized Gabor magnitude responses. Feature reduction using principal component analysis is acceptable for maintaining the segmentation performance, but feature reduction using the feature contrast method dramatically reduced the segmentation accuracy. Overall, the designed fused feature set is advocated as a means for improving texture segmentation performance.
提出了一种基于设计的方法,将Gabor滤波器和灰度共生概率(GLCP)特征相融合,以改进纹理识别。融合后的特征集既利用了Gabor滤波器精确捕捉低频和中频纹理信息的能力,也利用了GLCP在与高频分量相关的纹理信息方面的能力。评估方法包括比较特征空间可分性和比较图像分割分类率。结果表明,融合后的特征集相对于单个特征集能产生更高的特征空间分离度,以及更高的分割精度。在不同噪声强度下,融合后的特征集在处理噪声图像时也优于单个特征集。结果表明,使用所提出的48维融合特征集进行分割时,维度灾难不会产生影响。Gabor幅度响应比线性归一化的Gabor幅度响应产生更高的分割精度。使用主成分分析进行特征约简对于保持分割性能是可以接受的,但使用特征对比度方法进行特征约简会显著降低分割精度。总体而言,所设计的融合特征集被认为是提高纹理分割性能的一种手段。