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Dynamic Few-Shot Visual Learning Without Forgetting

机译:无需忘记的动态少量视觉学习

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The human visual system has the remarkably ability to be able to effortlessly learn novel concepts from only a few examples. Mimicking the same behavior on machine learning vision systems is an interesting and very challenging research problem with many practical advantages on real world vision applications. In this context, the goal of our work is to devise a few-shot visual learning system that during test time it will be able to efficiently learn novel categories from only a few training data while at the same time it will not forget the initial categories on which it was trained (here called base categories). To achieve that goal we propose (a) to extend an object recognition system with an attention based few-shot classification weight generator, and (b) to redesign the classifier of a ConvNet model as the cosine similarity function between feature representations and classification weight vectors. The latter, apart from unifying the recognition of both novel and base categories, it also leads to feature representations that generalize better on 'unseen' categories. We extensively evaluate our approach on Mini-ImageNet where we manage to improve the prior state-of-the-art on few-shot recognition (i.e., we achieve 56.20% and 73.00% on the 1-shot and 5-shot settings respectively) while at the same time we do not sacrifice any accuracy on the base categories, which is a characteristic that most prior approaches lack. Finally, we apply our approach on the recently introduced few-shot benchmark of Bharath and Girshick [4] where we also achieve state-of-the-art results.
机译:人类视觉系统具有非凡的能力,能够仅从几个示例中轻松学习新颖的概念。在机器学习视觉系统上模仿相同的行为是一个有趣且极具挑战性的研究问题,在现实世界的视觉应用中具有许多实际优势。在这种情况下,我们的工作目标是设计一个简单的视觉学习系统,使其在测试期间能够仅从少量训练数据中有效地学习新颖的类别,而同时又不会忘记初始类别对其进行了培训(此处称为基本类别)。为了实现该目标,我们建议(a)扩展基于注意力的少数镜头分类权重生成器的对象识别系统,并(b)将ConvNet模型的分类器重新设计为特征表示和分类权重向量之间的余弦相似度函数。后者,除了统一识别新颖和基本类别外,还导致特征表示在“看不见的”类别上有更好的概括。我们在Mini-ImageNet上广泛评估了我们的方法,在此方法上,我们设法改善了单发识别的现有技术水平(即,在1发和5发设置下分别达到了56.20%和73.00%)同时,我们不会在基本类别上牺牲任何准确性,这是大多数现有方法所缺乏的特征。最后,我们在最近引入的Bharath和Girshick [4]的基准测试中应用了我们的方法,在此我们还获得了最新的结果。

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