Image group compression using texture databases
نویسنده
چکیده
An image compression approach capable of exploiting redundancies in groups of images is introduced. The approach is based on image segmentation, texture analysis and texture synthesis. The proposed algorithm extracts textured regions from an image and merges them with similar texture data from other images, in order to take advantage of textural re-occurrences between the images. The texture extraction is done by taking overlapping rectangular texture parameter samples from the input image(s), and using a clustering algorithm to merge them into spatially connected regions, resulting in a polygonal texture map. The textures of that map are henceforth analysed by extracting various features from the texture regions. Using a metric defined on these features, the textures are then merged with entries from a central database, which consists of all the textures in all the images of the image collection, so that for each image, only a polygonal segmentation map and references into this texture database need to be stored. Decoding (decompression) works by extracting the polygonal texture map followed by filling the map regions with patterns generated using texture synthesis based on the texture feature vectors from the database.
منابع مشابه
Compresion Effects on Color and Texture Based Multimedia Indexing and Retrieval
This paper presents an evaluation of digital compression effects on content-based multimedia retrieval using color and texture attributes. Subjective evaluation tests that are applied on digital image and video databases using different compression and visual feature extraction techniques have been performed and reported. Simulations show that a satisfactory retrieval performance can be obtaine...
متن کاملCompression effects on color and texture based multimedia indexing and retrieval
This paper presents an evaluation of digital compression effects on content-hosed multimedia retrieval using color and texture attributes. Subjective evaluation tests that are applied on digital image and video datahases using different compression and vi.~ual feature extraction techniques have been performed and reported. Simulations show that a satisfactory retrieval performance can be obtain...
متن کاملEfficient Image Retrieval with Jpeg2000 and Dwt- Based Downscaling
Content-based image indexing complexity often depends on image dimensions and data size. Reducing image dimensions before indexing affects the overall feature extraction and indexing complexity, as well as the retrieval performance. In this paper, the effects of Discrete Wavelet Transform (DWT) based downscaling on semantic retrieval performance are investigated via dedicated experiments. Sever...
متن کاملDCT-Based Downscaling Effects on Color and Texture-Based Image Retrieval
This paper evaluates the effects of downscaling in compressed domain on content-based image retrieval based on experimental studies. Several experimental databases are generated based on uncompressed ones using JPEG compression and DCT-scaling. Color and texture features are used in the retrieval queries, which constitute the base for the experiments. The query results are graded subjectively, ...
متن کاملImage Compression in the Wavelet Domain Using an AR Texture Model with Compressed Initial Conditions
This paper present a texture compression technique for still images based on the wavelet transform and the auto-regressive (AR) texture model in order to increase the compression ratio with a minimal loss of image quality. First the influences of the initial condition and the order of an AR model on the resulting texture model are investigated to serve as a theoretical foundation for the propos...
متن کامل