A Novel Feature Descriptor for Image Retrieval by Combining Modified Color Histogram and Diagonally Symmetric Co-occurrence Texture Pattern
Ayan Kumar Bhunia, Avirup Bhattacharyya, Prithaj Banerjee, Partha, Pratim Roy, Subrahmanyam Murala

TL;DR
This paper introduces a new feature descriptor combining modified color histograms and diagonally symmetric co-occurrence textures, improving image retrieval accuracy across multiple databases.
Contribution
It presents a novel combined color and texture descriptor, exploring inter-channel relationships in HSV and symmetric co-occurrence textures, outperforming existing descriptors.
Findings
Significant improvement in image retrieval accuracy.
Effective combination of color and texture features.
Validated on five diverse image databases.
Abstract
In this paper, we have proposed a novel feature descriptors combining color and texture information collectively. In our proposed color descriptor component, the inter-channel relationship between Hue (H) and Saturation (S) channels in the HSV color space has been explored which was not done earlier. We have quantized the H channel into a number of bins and performed the voting with saturation values and vice versa by following a principle similar to that of the HOG descriptor, where orientation of the gradient is quantized into a certain number of bins and voting is done with gradient magnitude. This helps us to study the nature of variation of saturation with variation in Hue and nature of variation of Hue with the variation in saturation. The texture component of our descriptor considers the co-occurrence relationship between the pixels symmetric about both the diagonals of a 3x3…
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