scispace - formally typeset
Z

Zhengsu Chen

Researcher at Beihang University

Publications -  8
Citations -  97

Zhengsu Chen is an academic researcher from Beihang University. The author has contributed to research in topics: Dropout (neural networks) & Artificial neural network. The author has an hindex of 3, co-authored 8 publications receiving 43 citations. Previous affiliations of Zhengsu Chen include Huawei.

Papers
More filters
Posted Content

Weight-Sharing Neural Architecture Search: A Battle to Shrink the Optimization Gap

TL;DR: A literature review on the application of NAS to computer vision problems is provided and existing approaches are summarized into several categories according to their efforts in bridging the gap.
Proceedings ArticleDOI

Network Adjustment: Channel Search Guided by FLOPs Utilization Ratio

TL;DR: Network Adjustment as discussed by the authors considers network accuracy as a function of FLOPs, and proposes an iterative mechanism so that the initial network undergoes a number of steps, each of which has a small "adjusting rate" to control the changes to the network.
Posted Content

Visformer: The Vision-friendly Transformer

TL;DR: Visformer as mentioned in this paper proposes a new architecture named VISformer, which is abbreviated from the ''Vision-friendly Transformer'' with the same computational complexity, and outperforms both the Transformer-based and convolution-based models in terms of ImageNet classification accuracy.
Posted Content

DropFilter: Dropout for Convolutions.

TL;DR: DropFilter as discussed by the authors randomly suppresses the outputs of some filters to prevent co-adaptions in convolutional layers, which significantly improves the performance of CNNs on CIFAR and ImageNet.
Proceedings Article

Visformer: The Vision-Friendly Transformer

TL;DR: Visformer as mentioned in this paper proposes a new architecture named VISformer, which is abbreviated from the ''Vision-friendly Transformer'' with the same computational complexity, and outperforms both the Transformer-based and convolution-based models in terms of ImageNet classification accuracy.