DCSCR: A Class-Specific Collaborative Representation based Network for Image Set Classification
Xizhan Gao, Wei Hu

TL;DR
This paper introduces DCSCR, a novel deep learning framework that combines traditional and deep features for improved few-shot image set classification by adaptively learning set similarities.
Contribution
It proposes a new class-specific collaborative representation network that effectively learns both local and global features and set similarities in few-shot scenarios.
Findings
Outperforms state-of-the-art ISC algorithms on benchmark datasets.
Effectively learns concept-level features for image sets.
Demonstrates robustness in few-shot classification tasks.
Abstract
Image set classification (ISC), which can be viewed as a task of comparing similarities between sets consisting of unordered heterogeneous images with variable quantities and qualities, has attracted growing research attention in recent years. How to learn effective feature representations and how to explore the similarities between different image sets are two key yet challenging issues in this field. However, existing traditional ISC methods classify image sets based on raw pixel features, ignoring the importance of feature learning. Existing deep ISC methods can learn deep features, but they fail to adaptively adjust the features when measuring set distances, resulting in limited performance in few-shot ISC. To address the above issues, this paper combines traditional ISC methods with deep models and proposes a novel few-shot ISC approach called Deep Class-specific Collaborative…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Brain Tumor Detection and Classification · Advanced Image and Video Retrieval Techniques
