Curriculum learning needs example difficulty to proceed from easy to hard. However, the credibility of image difficulty is rarely investigated, which can seriously affect the effectiveness of curricula. In this work, we propose Angular Gap, a measure of difficulty based on the difference in angular distance between feature embeddings and class-weight embeddings built by hyperspherical learning. To ascertain difficulty estimation, we introduce class-wise model calibration, as a post-training technique, to the learnt hyperbolic space. This bridges the gap between probabilistic model calibration and angular distance estimation of hyperspherical learning. We show the superiority of our calibrated Angular Gap over recent difficulty metrics on CIFAR10-H and ImageNetV2. We further propose Angular Gap based curriculum learning for unsupervised domain adaptation that can translate from learning easy samples to mining hard samples. We combine this curriculum with a state-of-the-art self-training method, Cycle Self Training (CST). The proposed Curricular CST learns robust representations and outperforms recent baselines on Office31 and VisDA 2017.
翻译:课程学习需要从简单到硬的难度。然而,图像难度的可信度很少被调查,这可能会严重影响课程的有效性。在这项工作中,我们建议了角差,这是基于地貌嵌入和超球学习所建班级重量嵌入之间的角距离差异的一种困难度量。为了确定难度估计,我们向学习的超单向空间引入了等级方法模型校准,作为培训后技术。这缩小了概率模型校准和超球学习的角距离估计之间的差距。我们显示了我们的校准角差相对于最近CIFAR10-H和图像网络网2的难度度量值的优势。我们进一步建议了基于角差的课程学习,以便进行不受监督的域适应,从学习容易的样品转化到开采硬样品。我们把这一课程与最先进的自我培训方法,即循环自我培训(CST)结合起来。拟议的SLCEST课程学习了强的表达方式,并超越了办公室31和VisDA 2017的最近基线。