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Multi-Resolution Joint Auto Correlograms for Content-Based Image Retrieval

机译:基于内容的图像检索的多分辨率联合自动相关图

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The past few years have seen a major development in Content-based Image Retrieval (CBIR) due to the needs by various fields in accessing visual data, particularly images. As a result, several techniques have been developed to allow image databases to be queried by their image content.Colour Auto Correlogram (CAC) is one of the promising colour descriptors used to extract and index image features effectively. However, the conventional CAC and most of its advancements are only based on single image feature, not sensitive to scale, and computed in the spatial domain. A newmethod for CBIR has been introduced by allowing multiple local image features to represent an image rather than just colour and extracting them at different level of the image sub-bands to provide different physical structures of the image in the frequency domain. The Ridgelet transform isperformed on the RGB colour space and the grey-scale version of the image to provide the multi-resolution levels. Colour feature is extracted from the Ridgelet coefficients of the RGB colour space while other image features such as gradient magnitude, rank, and texturedness are extracted fromthe Ridgelet coefficients of the grey-scale image. Each of these image features is quantised and the auto correlogram is then performed on the respective quantised image feature coefficients. Retrieval experiments conducted on 1000 SIMPLIcity image database has demonstrated that the proposedMulti-resolution Joint Auto Correlograms (MJAC) has achieved a significant improvement in effectiveness compared to the traditional CAC and several of its advancements.
机译:由于在访问视觉数据,特别是图像中的各种领域的需求,过去几年已经看到了基于内容的图像检索(CBIR)的主要发展。结果,已经开发了几种技术来允许其图像内容询问图像数据库.Colour自动相关图(CAC)是用于有效提取和索引图像特征的有希望的颜色描述符之一。然而,传统的CAC和大多数进步仅基于单个图像特征,而不是尺度敏感,并且在空间域中计算。通过允许多个本地图像特征来表示图像而不是在图像子带的不同级别提取它们以在频域中提供不同的级别的不同物理结构来引入CBIR的新方法。 RGB颜色空间和图像的灰度版本上的Ridgelet转换为图像,以提供多分辨率级别。从RGB颜色空间的Ridgelet系数提取颜色特征,而其他图像特征(例如梯度幅度,等级)诸如灰度系数的ridgelet系数提取。这些图像特征中的每一个被量化,然后在相应的量化图像特征系数上执行自动相关图。在1000简单图像数据库上进行的检索实验表明,与传统CAC和其几个进步相比,建议的拟议分辨率联合自动相关图(MJAC)取得了显着改善的有效性。

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