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Bayesian Classification for Image Retrieval Using Visual Dictionary

机译:使用可视字典的贝叶斯分类进行图像检索

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Image Retrieval is one of the most promising technologies for retrieving images through the query image. It enables the user to search for the images based upon the relevance of the query image. The main objective of this paper is to develop a faster and more accurate image retrieval system for a dynamic environment such as World Wide Web (WWW). The image retrieval is done by considering color, texture, and edge features. The bag-of-words model can be applied to image classification, by treating image features as words. The goal is to improve the retrieval speed and accuracy of the image retrieval systems which can be achieved through extracting visual features. The global color space model and dense SIFT feature extraction technique have been used to generate a visual dictionary using Bayesian algorithm. The images are transformed into set of features. These features are used as an input in Bayesian algorithm for generating the code word to form a visual dictionary. These code words are used to represent images semantically to form visual labels using Bag-of-Features (BoF). Then it can be extended by combining more features and their combinations. The color and bitmap method involves extracting only the local and global features such as mean and standard deviation. But in this classification technique, color, texture, and edge features are extracted and then Bayesian Algorithm is applied on these image features which gives acceptable classification in order to increases the accuracy of image retrieval.
机译:图像检索是通过查询图像检索图像的最有前途的技术之一。它使用户能够基于查询图像的相关性来搜索图像。本文的主要目的是为动态环境(例如,万维网(WWW))开发更快,更准确的图像检索系统。图像检索是通过考虑颜色,纹理和边缘特征来完成的。通过将图像特征视为单词,词袋模型可以应用于图像分类。目的是提高图像检索系统的检索速度和准确性,这可以通过提取视觉特征来实现。全局色彩空间模型和密集SIFT特征提取技术已用于使用贝叶斯算法生成可视词典。图像被转换为​​特征集。这些特征在贝叶斯算法中用作输入,用于生成代码字以形成可视词典。这些代码字用于使用特征包(BoF)在语义上表示图像以形成可视标签。然后,可以通过组合更多功能及其组合来扩展它。颜色和位图方法仅涉及提取局部和全局特征,例如均值和标准差。但是在这种分类技术中,提取颜色,纹理和边缘特征,然后对这些图像特征应用贝叶斯算法,该算法给出了可接受的分类,以提高图像检索的准确性。

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