Object Classification with Joint Projection and Low-rank Dictionary Learning
Homa Foroughi, Nilanjan Ray, Hong Zhang

TL;DR
This paper introduces a joint projection and low-rank dictionary learning method with dual graph constraints to improve object classification robustness against intra-class variability, occlusion, and limited data.
Contribution
It proposes a novel joint learning framework combining projection and dictionary learning with graph constraints, enhancing discriminative features and robustness to variations and outliers.
Findings
Improved classification accuracy on datasets with high intra-class variability.
Robustness to occlusion, corruption, and small sample sizes.
Enhanced discriminative ability through graph-structured constraints.
Abstract
For an object classification system, the most critical obstacles towards real-world applications are often caused by large intra-class variability, arising from different lightings, occlusion and corruption, in limited sample sets. Most methods in the literature would fail when the training samples are heavily occluded, corrupted or have significant illumination or viewpoint variations. Besides, most of the existing methods and especially deep learning-based methods, need large training sets to achieve a satisfactory recognition performance. Although using the pre-trained network on a generic large-scale dataset and fine-tune it to the small-sized target dataset is a widely used technique, this would not help when the content of base and target datasets are very different. To address these issues, we propose a joint projection and low-rank dictionary learning method using dual graph…
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Taxonomy
TopicsRemote-Sensing Image Classification · Domain Adaptation and Few-Shot Learning · Advanced Image and Video Retrieval Techniques
