Title :
Enriching Texture Analysis with Semantic Data
Author :
Matthews, Tim ; Nixon, Mark S. ; Niranjan, Mahesan
Author_Institution :
Signal Process. & Control Group, Univ. of Southampton, Southampton, UK
Abstract :
We argue for the importance of explicit semantic modelling in human-centred texture analysis tasks such as retrieval, annotation, synthesis, and zero-shot learning. To this end, low-level attributes are selected and used to define a semantic space for texture. 319 texture classes varying in illumination and rotation are positioned within this semantic space using a pair wise relative comparison procedure. Low-level visual features used by existing texture descriptors are then assessed in terms of their correspondence to the semantic space. Textures with strong presence of attributes connoting randomness and complexity are shown to be poorly modelled by existing descriptors. In a retrieval experiment semantic descriptors are shown to outperform visual descriptors. Semantic modelling of texture is thus shown to provide considerable value in both feature selection and in analysis tasks.
Keywords :
feature extraction; image classification; image retrieval; image texture; learning (artificial intelligence); object recognition; complexity; explicit semantic modelling; feature selection; human-centred texture analysis task; illumination; image annotation; image retrieval; image synthesis; low-level attributes; low-level visual features; randomness; rotation; semantic data; semantic space; texture descriptors; zero-shot learning; Equations; Mathematical model; Semantics; Support vector machines; Vectors; Visualization; Weaving; semantics; texture;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPR.2013.165