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CHEX: CHannel EXploration for CNN Model Compression
Zejiang Hou
, Minghai Qin
, Fei Sun
, Xiaolong Ma
, Kun Yuan
, Yi Xu
, Yen Kuang Chen
, Rong Jin
, Yuan Xie
,
Sun Yuan Kung
Electrical and Computer Engineering
Center for Statistics & Machine Learning
Research output
:
Chapter in Book/Report/Conference proceeding
›
Conference contribution
87
Scopus citations
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Computer Science
Computer Vision Task
50%
Convolutional Neural Network
100%
Deep Convolutional Neural Networks
50%
Experimental Result
50%
Feature Subset Selection
50%
Global Channel
50%
Image Classification
50%
Instance Segmentation
50%
Model Compression
100%
Object Detection
50%
quality model
50%
Residual Neural Network
100%
Sparsity
50%
Training Process
50%
Engineering
Computervision
50%
Convolutional Neural Network
50%
Experimental Result
50%
Image Classification
50%
Interlayer
50%
Limitations
100%
Sparsity
50%
Tasks
50%
Keyphrases
CNN Compression
100%
ResNet50 Model
66%