For deep ordinal classification, learning a well-structured feature space specific to ordinal classification is helpful to properly capture the ordinal nature among classes. Intuitively, when Euclidean distance metric is used, an ideal ordinal layout in feature space would be that the sample clusters are arranged in class order along a straight line in space. However, enforcing samples to conform to a specific layout in the feature space is a challenging problem. To address this problem, in this paper, we propose a novel Constrained Proxies Learning (CPL) method, which can learn a proxy for each ordinal class and then adjusts the global layout of classes by constraining these proxies. Specifically, we propose two kinds of strategies: hard layout constraint and soft layout constraint. The hard layout constraint is realized by directly controlling the generation of proxies to force them to be placed in a strict linear layout or semicircular layout (i.e., two instantiations of strict ordinal layout). The soft layout constraint is realized by constraining that the proxy layout should always produce unimodal proxy-to-proxies similarity distribution for each proxy (i.e., to be a relaxed ordinal layout). Experiments show that the proposed CPL method outperforms previous deep ordinal classification methods under the same setting of feature extractor.
翻译:对于深度序数分类,学习一个特定于序数分类的良好结构特征空间有助于适当地捕捉类之间的序数性质。直觉上,当使用欧几里得距离度量时,在特征空间中理想的序数布局应该是样本聚类按照类顺序沿着一条直线排列。然而,迫使样本在特征空间中符合特定布局是一个具有挑战性的问题。为了解决这个问题,本文提出了一种新颖的约束代理学习(Constrained Proxies Learning,CPL)方法,该方法可以为每个序数类学习一个代理,然后通过约束这些代理来调整类的全局布局。具体而言,我们提出了两种策略:硬布局约束和软布局约束。硬布局约束通过直接控制代理的生成来实现,以强制它们按照严格线性布局或半圆形布局排放(即,严格序数布局的两种实例)。软布局约束通过约束代理布局始终产生每个代理的单峰代理到代理相似度分布(即,成为放松的序数布局)。实验证明,所提出的CPL方法在特征提取器相同的情况下优于以前的深度序数分类方法。