2022
DOI: 10.1109/tmm.2021.3077729
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Fast Adaptive Meta-Learning for Few-Shot Image Generation

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Cited by 27 publications
(9 citation statements)
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References 42 publications
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“…For one-and fewshot learning, a robust 'transfer of particle', introduced in 1901 by Woodworth [91], is also a desired mechanism because generalizing based on one or few datapoints to account for intra-class variability of thousands images is formidable. One-and Few-shot Learning (FSL) have been studied in computer vision in both shallow [12,2,11,45] and deep learning scenarios [32,84,73,13,78,107,24,23,57,69,80,56,25,94]. For brevity, we review only the deep learning techniques.…”
Section: A Learning From Few Samplesmentioning
confidence: 99%
See 1 more Smart Citation
“…For one-and fewshot learning, a robust 'transfer of particle', introduced in 1901 by Woodworth [91], is also a desired mechanism because generalizing based on one or few datapoints to account for intra-class variability of thousands images is formidable. One-and Few-shot Learning (FSL) have been studied in computer vision in both shallow [12,2,11,45] and deep learning scenarios [32,84,73,13,78,107,24,23,57,69,80,56,25,94]. For brevity, we review only the deep learning techniques.…”
Section: A Learning From Few Samplesmentioning
confidence: 99%
“…LRPABN [24] uses an effective low-rank pairwise bilinear pooling operation to capture the nuanced differences between images. FAML [57] proposes a novel GAN-based few-shot image generation approach, which is capable of generating new realistic images for unseen target classes in the low-sample regime. Zhu et al [104] propose a novel global grouping metric to incorporate the global context, resulting in a per-channel modulation of local relation features.…”
Section: A Learning From Few Samplesmentioning
confidence: 99%
“…Meta learning has been applied to a range of research domains including various computer vision tasks, natural language processing and recently automatic speech recognition. In the computer vision area, meta learning has been exploited for the few-shot image classification task [12], object detection [13] and video generation [14]. In the natural language processing domain, meta learning has shown promising results in neural machine translation (NMT) for resource constraint languages [15].…”
Section: Meta Learningmentioning
confidence: 99%
“…The approach of few-shot learning is to train a network on the training set and fine-tune with the few data in the novel classes. Such scenarios can be applied to many tasks, such as video classification [18], image recognition [19], [20], image generation [21] or image semantic segmentation [1], [4], [22]. Few-shot semantic segmentation aims to perform pixel-level classification for novel classes in a query image conditioned on only a few annotated support images.…”
Section: Few-shot Segmentationmentioning
confidence: 99%