Few-shot learning features the capability of generalizing from a few examples. In this paper, we first identify that a discriminative feature space, namely a rectified metric space, that is learned to maintain the metric consistency from training to testing, is an essential component to the success of metric-based few-shot learning. Numerous analyses indicate that a simple modification of the objective can yield substantial performance gains. The resulting approach, called rectified metric propagation (ReMP), further optimizes an attentive prototype propagation network, and applies a repulsive force to make confident predictions. Extensive experiments demonstrate that the proposed ReMP is effective and efficient, and outperforms the state of the arts on various standard few-shot learning datasets.
翻译:少见的学习能概括一些实例。 在本文中,我们首先发现,一个歧视性的特征空间,即经校正的计量空间,从培训到测试,学会维持从培训到测试的衡量一致性,是基于计量的少见学习成功的关键组成部分。许多分析表明,对目标的简单修改可以产生显著的绩效收益。由此产生的方法,称为校正的衡量传播(REMP),进一步优化一个专注的原型传播网络,并运用令人厌恶的力量作出自信的预测。 广泛的实验表明,拟议的RMP是有效和高效的,在各种标准的少见的学习数据集方面超过了艺术水平。