Low-Shot Learning From Imaginary 3D Model

Frederik Pahde, M. Puscas, Jannik Wolff, T. Klein, N. Sebe, Moin Nabi
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引用次数: 9

Abstract

Since the advent of deep learning, neural networks have demonstrated remarkable results in many visual recognition tasks, constantly pushing the limits. However, the state-of-the-art approaches are largely unsuitable in scarce data regimes. To address this shortcoming, this paper proposes employing a 3D model, which is derived from training images. Such a model can then be used to hallucinate novel viewpoints and poses for the scarce samples of the few-shot learning scenario. A self-paced learning approach allows for the selection of a diverse set of high-quality images, which facilitates the training of a classifier. The performance of the proposed approach is showcased on the fine-grained CUB-200-2011 dataset in a few-shot setting and significantly improves our baseline accuracy.
低镜头学习从虚构的3D模型
自深度学习出现以来,神经网络在许多视觉识别任务中表现出了显著的效果,不断突破极限。然而,最先进的方法在数据稀缺的情况下基本上不适合。为了解决这一问题,本文提出采用基于训练图像的三维模型。这样的模型可以用来为少数镜头学习场景的稀缺样本产生新的观点和姿势。自定节奏的学习方法允许选择一组不同的高质量图像,这有助于分类器的训练。该方法的性能在细粒度的CUB-200-2011数据集上得到了验证,并显著提高了我们的基线精度。
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