
Example-based texture synthesis is a fundamental topic of many image analysis and computer vision applications. Consequently, its representation is one of the most critical and challenging topics in computer vision and pattern recognition, attracting much academic interest throughout the years. In this paper, a new statistical method to synthesize textures is proposed. It consists in using two indexed random coefficients autoregressive (2D-RCA) models to deal with this problem. These models have a good ability to well detect neighborhood information. Simulations have demonstrated that the 2D-RCA models are very suitable to represent textures. So, in this work, to generate textures from an example, each original image is splitted into blocks which are modeled by the 2D-RCA. The proposed algorithm produces approximations of the obtained blocks images from the original image using the generalized method of moments (GMM). Different sizes of windows have been used. This study offers some important insights into the newly generated image. Satisfying obtained results have been compared to those given by well-established methods. The proposed algorithm outperforms the state-of-the-art approaches.
Medicine (General), Artificial intelligence, Image Inpainting, FOS: Political science, Representation Learning, FOS: Law, Pattern recognition (psychology), Autoregressive model, texture synthesis, Automated Reconstruction of Fragmented Objects, R5-920, Image processing, Shape Matching and Object Recognition, QA1-939, Image (mathematics), FOS: Mathematics, Image texture, Political science, exemplar based method, Statistics, Politics, Texture Classification, Texture (cosmology), Texture synthesis, Computer science, Algorithm, 2d-rca models, Generative Adversarial Networks in Image Processing, Computer Science, Physical Sciences, Texture Synthesis, Image Synthesis, Computer Vision and Pattern Recognition, gmm, Representation (politics), Law, local approximated images, Mathematics
Medicine (General), Artificial intelligence, Image Inpainting, FOS: Political science, Representation Learning, FOS: Law, Pattern recognition (psychology), Autoregressive model, texture synthesis, Automated Reconstruction of Fragmented Objects, R5-920, Image processing, Shape Matching and Object Recognition, QA1-939, Image (mathematics), FOS: Mathematics, Image texture, Political science, exemplar based method, Statistics, Politics, Texture Classification, Texture (cosmology), Texture synthesis, Computer science, Algorithm, 2d-rca models, Generative Adversarial Networks in Image Processing, Computer Science, Physical Sciences, Texture Synthesis, Image Synthesis, Computer Vision and Pattern Recognition, gmm, Representation (politics), Law, local approximated images, Mathematics
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