Author :
Ion, Anca ; Stanescu, Liana ; Burdescu, Dan ; Udristoiu, Stefan
Abstract :
Our goal is to organize the image contents semantically. In this paper, we propose a method to classify the images semantically, using the C-fuzzy algorithm to segment the natural scenes into perceptually uniform regions. The low-level characteristics that are taken into account are: color, texture, shape, absolute spatial arrangement, spatial coherency, and dimension. Since humans are the ultimate users of most image retrieval systems, it is important to organize the contents semantically, according to meaningful categories. This requires an understanding of the important semantic categories that humans use for image classification, and the extraction of meaningful image features that can discriminate between these categories. A lot of experiments, in which the human subjects had to group images into semantic categories and to explain the criteria for their choice, were realized. From these experiments, we identify the semantic categories (landscapes, animals, flowers, etc), the semantic indicators or intermediate descriptors and their visual characteristics.
Keywords :
fuzzy set theory; image classification; image colour analysis; image retrieval; image texture; C-fuzzy algorithm; absolute spatial arrangement; color characteristics; image classification; image low-level descriptors; image retrieval systems; low-level characteristics; natural scene segmentation; semantic concepts; shape characteristics; spatial coherency; texture characteristics; Content based retrieval; Data mining; Feature extraction; Humans; Image retrieval; Image segmentation; Information retrieval; Robustness; Shape; Spatial coherence; automatic image annotation; color; content-based image retrieval; low-level descriptors; semantic image indexing; shape; texture;