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Wenbin Li

Researcher at Nanjing University

Publications -  72
Citations -  1195

Wenbin Li is an academic researcher from Nanjing University. The author has contributed to research in topics: Computer science & Metric (mathematics). The author has an hindex of 9, co-authored 40 publications receiving 510 citations.

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Proceedings ArticleDOI

Revisiting Local Descriptor Based Image-To-Class Measure for Few-Shot Learning

TL;DR: This work proposes a Deep Nearest Neighbor Neural Network (DN4), a simple, effective, and computationally efficient framework for few-shot learning that not only learns the optimal deep local descriptors for the image-to-class measure, but also utilizes the higher efficiency of such a measure in the case of example scarcity.
Journal ArticleDOI

Distribution Consistency Based Covariance Metric Networks for Few-Shot Learning

TL;DR: The CovaMNet is designed to exploit both the covariance representation and covariance metric based on the distribution consistency for the few-shot classification tasks and employs the episodic training mechanism to train the entire network in an end-to-end manner from scratch.
Proceedings Article

WebCaricature: a benchmark for caricature recognition

TL;DR: A new caricature dataset is built, with the objective to facilitate research in caricature recognition, and a framework for caricature face recognition is presented to make a thorough analyze of the challenges of caricature recognition.
Proceedings ArticleDOI

Learning Task-aware Local Representations for Few-shot Learning.

TL;DR: An Adaptive Task-aware Local Representations Network (ATL-Net) is proposed to address this limitation by introducing episodic attention, which can adaptively select the important local patches among the entire task, as the process of human recognition.
Journal ArticleDOI

Robust neighborhood embedding for unsupervised feature selection

TL;DR: Extensive experimental results on benchmark datasets validate that the RNE method is effective and superior to the state-of-the-art unsupervised feature selection algorithms in terms of clustering performance.