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ILGNet: Inception Modules with Connected Local and Global Features for
  Efficient Image Aesthetic Quality Classification using Domain Adaptation
v1v2v3 (latest)

ILGNet: Inception Modules with Connected Local and Global Features for Efficient Image Aesthetic Quality Classification using Domain Adaptation

7 October 2016
Xin Jin
Le Wu
Zheyuan He
Siyu Chen
Jingying Chi
Siwei Peng
Shiming Ge
Geng Zhao
Xiaodong Li
ArXiv (abs)PDFHTML

Papers citing "ILGNet: Inception Modules with Connected Local and Global Features for Efficient Image Aesthetic Quality Classification using Domain Adaptation"

1 / 1 papers shown
Title
Image Aesthetics Assessment Using Composite Features from off-the-Shelf
  Deep Models
Image Aesthetics Assessment Using Composite Features from off-the-Shelf Deep Models
Xin Fu
Jia Yan
Cien Fan
75
17
0
22 Feb 2019
1