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Sill-Net: Feature Augmentation with Separated Illumination Representation

About

For visual object recognition tasks, the illumination variations can cause distinct changes in object appearance and thus confuse the deep neural network based recognition models. Especially for some rare illumination conditions, collecting sufficient training samples could be time-consuming and expensive. To solve this problem, in this paper we propose a novel neural network architecture called Separating-Illumination Network (Sill-Net). Sill-Net learns to separate illumination features from images, and then during training we augment training samples with these separated illumination features in the feature space. Experimental results demonstrate that our approach outperforms current state-of-the-art methods in several object classification benchmarks.

Haipeng Zhang, Zhong Cao, Ziang Yan, Changshui Zhang• 2021

Related benchmarks

TaskDatasetResultRank
Image ClassificationGTSRB
Accuracy99.68
291
Few-shot classificationMini-Imagenet 5-way 5-shot
Accuracy89.14
87
Few-shot classificationMini-ImageNet 1-shot 5-way (test)
Accuracy82.99
82
Few-shot classificationCUB200 5-way 1-shot
Accuracy94.73
36
Few-shot classificationCIFAR-FS 5-way 5-shot (test)
Accuracy91.09
11
One-shot ClassificationBelga to Flickr 32-way (test)
Accuracy69.75
10
One-shot ClassificationBelga to TopLogo 11-way (test)
Accuracy84.43
10
One-shot ClassificationGTSRB→GTSRB (22+21)-way
Accuracy97.6
6
Few-shot classificationCIFAR-FS 5-way 1-shot (test)
Accuracy87.73
6
Few-shot classificationCUB 5-way 5-shot (test)
Accuracy96.28
6
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