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- Title
ILGNet: inception modules with connected local and global features for efficient image aesthetic quality classification using domain adaptation.
- Authors
Xin Jin; Le Wu; Xiaodong Li; Xiaokun Zhang; Jingying Chi; Siwei Peng; Shiming Ge; Geng Zhao; Shuying Li
- Abstract
In this study, the authors address a challenging problem of aesthetic image classification, which is to label an input image as high- or low-aesthetic quality. We take both the local and global features of images into consideration. A novel deep convolutional neural network named ILGNet is proposed, which combines both the inception modules and a connected layer of both local and global features. The ILGnet is based on GoogLeNet. Thus, it is easy to use a pre-trained GoogLeNet for large-scale image classification problem and fine tune their connected layers on a large-scale database of aesthetic-related images: AVA, i.e. domain adaptation. The experiments reveal that their model achieves the state of the arts in AVA database. Both the training and testing speeds of their model are higher than those of the original GoogLeNet.
- Subjects
IMAGE quality analysis; FEATURE extraction; AESTHETICS; ARTIFICIAL neural networks; IMAGE databases
- Publication
IET Computer Vision (Wiley-Blackwell), 2019, Vol 13, Issue 2, p206
- ISSN
1751-9632
- Publication type
Article
- DOI
10.1049/iet-cvi.2018.5249