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Rongrong Ji

Researcher at Xiamen University

Publications -  562
Citations -  20955

Rongrong Ji is an academic researcher from Xiamen University. The author has contributed to research in topics: Computer science & Feature (computer vision). The author has an hindex of 58, co-authored 483 publications receiving 14061 citations. Previous affiliations of Rongrong Ji include Columbia University & Harbin Institute of Technology.

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Training Compact CNNs for Image Classification using Dynamic-coded Filter Fusion.

TL;DR: In this paper, a dynamic-coded filter fusion (DCFF) method is proposed to derive compact CNNs in a computation-economical and regularization-free manner for efficient image classification.
Journal ArticleDOI

Weakly supervised codebook learning by iterative label propagation with graph quantization

TL;DR: A weakly supervised codebook learning framework, which integrates image labels to supervise codebook building with two steps: the Label Propagation step propagates image labels into local patches by multiple instance learning and instance selection and the Graph Quantization step integrates patch labels to build codebook using Mean Shift.
Journal ArticleDOI

Deepwalk-aware graph convolutional networks

TL;DR: This work introduces a deepwalk strategy into GCNs to explore the global graph information and can complement the local neighborhood information of a graph, resulting in the more robust representation for the graph data.
Proceedings ArticleDOI

Towards Compact Visual Descriptor via Deep Fisher Network with Binary Embedding

TL;DR: A novel compact image description scheme based on Fisher network with binary embedding to solve the large-scale image retrieval problem and can achieve very superior performance over the state-of-the-art methods.

OptG: Optimizing Gradient-driven Criteria in Network Sparsity

TL;DR: Zheng et al. as mentioned in this paper proposed to integrate supermask training into gradient-driven sparsity, and a novel supermask optimizer is further proposed to comprehensively mitigate the independence paradox.