Recently, deep metric learning techniques received attention, as the learned distance representations are useful to capture the similarity relationship among samples and further improve the performance of various of supervised or unsupervised learning tasks. We propose a novel supervised metric learning method that can learn the distance metrics in both geometric and probabilistic space for image recognition. In contrast to the previous metric learning methods which usually focus on learning the distance metrics in Euclidean space, our proposed method is able to learn better distance representation in a hybrid approach. To achieve this, we proposed a Generalized Hybrid Metric Loss (GHM-Loss) to learn the general hybrid proximity features from the image data by controlling the trade-off between geometric proximity and probabilistic proximity. To evaluate the effectiveness of our method, we first provide theoretical derivations and proofs of the proposed loss function, then we perform extensive experiments on two public datasets to show the advantage of our method compared to other state-of-the-art metric learning methods.
翻译:近期,深度度量学习技术受到了关注,因为学到的距离表示对于捕捉样本之间的相似性关系并进一步提高各种监督或非监督学习任务的性能非常有用。我们提出了一种新的有监督度量学习方法,可以学习几何空间和概率空间中的距离度量,用于图像识别。与之前通常专注于学习欧几里德空间中的距离度量的度量学习方法不同,我们的方法能够在混合方法下学习到更好的距离表示。为了实现这一点,我们提出了一个广义混合度量损失函数(GHM-Loss),通过控制几何和概率距离之间的权衡,学习了从图像数据中学习到的广义混合距离特征。为了评估我们方法的有效性,我们首先提供了所提出的损失函数的理论推导和证明,然后我们在两个公共数据集上进行了大量实验,以展示我们的方法与其他最先进的度量学习方法的优越性。