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Low-Shot Learning From Imaginary 3D Model

机译:虚构3D模型的低速学习

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摘要

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.
机译:自深度学习问世以来,神经网络已在许多视觉识别任务中显示出非凡的成果,并不断突破极限。但是,最先进的方法在不合适的数据体制中非常不合适。为了解决这个缺点,本文提出了一种采用3D模型的方法,该模型是从训练图像中得出的。然后,可以使用这种模型来为新颖的观点和姿势产生幻觉,以说明几次学习场景的稀缺样本。自定进度的学习方法允许选择各种高质量的图像,这有助于分类器的训练。在几次拍摄的情况下,在细粒度的CUB-200-2011数据集上展示了所建议方法的性能,并显着提高了基线精度。

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