Discrete Schroedinger Transform For Texture Recognition
Jo\~ao B. Florindo, Odemir M. Bruno

TL;DR
This paper introduces a novel non-linear feature extraction method for texture recognition based on the discrete Schroedinger transform, outperforming existing descriptors in classification accuracy and noise robustness.
Contribution
The paper proposes a new texture descriptor using the discrete Schroedinger transform, demonstrating superior performance over traditional methods in classification and noise resilience.
Findings
Outperforms traditional texture descriptors in classification accuracy.
Effective in identifying plant species from leaf images.
Robust against Gaussian and salt & pepper noise.
Abstract
This work presents a new procedure to extract features of grey-level texture images based on the discrete Schroedinger transform. This is a non-linear transform where the image is mapped as the initial probability distribution of a wave function and such distribution evolves in time following the Schroedinger equation from Quantum Mechanics. The features are provided by statistical moments of the distribution measured at different times. The proposed method is applied to the classification of three databases of textures used for benchmark and compared to other well-known texture descriptors in the literature, such as textons, local binary patterns, multifractals, among others. All of them are outperformed by the proposed method in terms of percentage of images correctly classified. The proposal is also applied to the identification of plant species using scanned images of leaves and…
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Taxonomy
TopicsSmart Agriculture and AI · Image Retrieval and Classification Techniques · Spectroscopy and Chemometric Analyses
