Fractional Local Neighborhood Intensity Pattern for Image Retrieval using Genetic Algorithm
Shuvozit Ghose, Abhirup Das, Ayan Kumar Bhunia, Partha Pratim Roy

TL;DR
This paper introduces FLNIP, a novel texture descriptor for image retrieval that encodes local intensity differences and uses a genetic algorithm to optimize retrieval performance across multiple resolutions.
Contribution
The paper proposes FLNIP, an enhanced local neighborhood intensity pattern descriptor, combined with a genetic algorithm for improved content-based image retrieval at multiple resolutions.
Findings
FLNIP outperforms existing local pattern methods in precision and recall.
Using multiple resolutions improves texture representation.
Genetic algorithm optimizes image retrieval accuracy.
Abstract
In this paper, a new texture descriptor named "Fractional Local Neighborhood Intensity Pattern" (FLNIP) has been proposed for content based image retrieval (CBIR). It is an extension of the Local Neighborhood Intensity Pattern (LNIP)[1]. FLNIP calculates the relative intensity difference between a particular pixel and the center pixel of a 3x3 window by considering the relationship with adjacent neighbors. In this work, the fractional change in the local neighborhood involving the adjacent neighbors has been calculated first with respect to one of the eight neighbors of the center pixel of a 3x3 window. Next, the fractional change has been calculated with respect to the center itself. The two values of fractional change are next compared to generate a binary bit pattern. Both sign and magnitude information are encoded in a single descriptor as it deals with the relative change in…
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