Fei Chen
Fuzhou University
24 Papers
99 Citations
Fei Chen is an academic researcher from Fuzhou University. The author has contributed to research in topics: Computer science & Image segmentation. The author has an hindex of 6, co-authored 15 publications. Previous affiliations of Fei Chen include Zhejiang University.
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Papers
Deep Learning Shape Priors for Object Segmentation
Fei Chen,Huimin Yu,Roland Hu,Xunxun Zeng +3 more
- 23 Jun 2013
TL;DR: A new shape-driven approach for object segmentation is introduced which uses deep Boltzmann machine to learn the hierarchical architecture of shape priors, and is applied to data-driven variational methods to perform object extraction of corrupted data based on shape probabilistic representation.
Shape Sparse Representation for Joint Object Classification and Segmentation
Fei Chen,Huimin Yu,Roland Hu +2 more
TL;DR: A novel variational model based on prior shapes for simultaneous object classification and segmentation is proposed, and a sparse linear combination of training shapes in a low-dimensional representation is used to regularize the target shape in variational image segmentation.
41
Model poisoning attack in differential privacy-based federated learning
TL;DR: Li et al. as mentioned in this paper proposed a model poisoning attack called Model Shuffle Attack (MSA), which designs a unique way to shuffle and scale the model parameters, and the malicious model after MSA has high accuracy on test set while reducing the global model convergence speed.
39
Image denoising via local and nonlocal circulant similarity
TL;DR: A patch based image denoising method is developed in this paper by introducing a new type of image self-similarity obtained by cyclic shift, which is called circulant similarity, and shows very competitive performance with state-of-the-art denoise method, especially on images corrupted by strong noise.
24
Robust sparse kernel density estimation by inducing randomness
TL;DR: A robust sparse kernel density estimation based on the reduced set density estimator is proposed, to induce randomness to the plug-in estimation of weighting coefficients.
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