NDPNet: A novel non-linear data projection network for few-shot fine-grained image classification
Weichuan Zhang, Xuefang Liu, Zhe Xue, Yongsheng Gao, Changming Sun

TL;DR
NDPNet introduces a non-linear data projection approach in few-shot fine-grained image classification, enhancing discriminability and addressing sample scarcity by projecting features into different non-linear spaces for improved similarity measurement.
Contribution
This work is the first to incorporate non-linear data projection into FSFGIC architecture, improving feature discriminability and classification performance.
Findings
Outperforms state-of-the-art benchmarks on FSFGIC tasks
Effectively reduces intra-class distances and increases inter-class distances
Can be integrated into existing episodic training frameworks
Abstract
Metric-based few-shot fine-grained image classification (FSFGIC) aims to learn a transferable feature embedding network by estimating the similarities between query images and support classes from very few examples. In this work, we propose, for the first time, to introduce the non-linear data projection concept into the design of FSFGIC architecture in order to address the limited sample problem in few-shot learning and at the same time to increase the discriminability of the model for fine-grained image classification. Specifically, we first design a feature re-abstraction embedding network that has the ability to not only obtain the required semantic features for effective metric learning but also re-enhance such features with finer details from input images. Then the descriptors of the query images and the support classes are projected into different non-linear spaces in our…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Advanced Image and Video Retrieval Techniques · Advanced Neural Network Applications
