Few-shot learning, especially few-shot image classification, has received increasing attention and witnessed significant advances in recent years. Some recent studies implicitly show that many generic techniques or “tricks”, such as data augmentation, pre-training, knowledge distillation, and self-supervision, may greatly boost the performance of a few-shot learning method. Moreover, different works may employ different software platforms, backbone architectures and input image sizes, making fair comparisons difficult and practitioners struggle with reproducibility. To address these situations, we propose a comprehensive library for few-shot learning (LibFewShot) by re-implementing eighteen state-of-the-art few-shot learning methods in a unified framework with the same single codebase in PyTorch. Furthermore, based on LibFewShot, we provide comprehensive evaluations on multiple benchmarks with various backbone architectures to evaluate common pitfalls and effects of different train
Europäischer Wasserstoff-Deal: Wasserstoffaktie mit vielversprechender Technologie - Einstieg nicht verpassen!
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Europäischer Wasserstoff-Deal: Wasserstoffaktie mit vielversprechender Technologie
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Gleich vier Modelle auf dem Markt: Das neue iPhone 13 im Praxistest
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Das neue iPhone 13 im Praxistest
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