利用低级信息对自然图像中的目标进行贝叶斯监督分割

J. Boldys, J. Boldys
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引用次数: 4

摘要

在图像检索和图像质量分析等许多领域中,检测图像中特定有意义的对象都具有重要意义。在这个贡献中,学习和检测了自然图像中11个经常观察到的物体(区域)。该算法基于区域合并和贝叶斯决策理论。主要目标不是完美的识别,因为为了达到这个目的,有必要使用关于图像内容的更高层次的知识。区段合并只进行到一个可靠的点,而不是合并不同的类别。独特的合并标准结合了所有最有可能的类别,颜色和纹理特征以及边缘信息附加到片段的概率值。结果在一些图像上得到了证明,并进行了讨论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian supervised segmentation of objects in natural images using low-level information
Detection of particular meaningful objects in images is of great importance in many fields, including image retrieval or image quality analysis. In this contribution, eleven frequently observed objects (areas) in natural images are learned and detected. The presented algorithm is based on region merging and Bayesian decision theory. The main goal is not perfect recognition, since for that purpose it is necessary to use higher-level knowledge about the image content. Merging of segments proceeds only up to a reliable point, not to merge different categories. Unique merging criteria combine the values of probabilities attached to the segments for all the most likely categories, color and texture features and information about edges. Results are demonstrated on a few images and discussed.
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