School of Computer Science, Northwestern Polytechnical University, China.
School of Artificial Intelligence, Optics and Electronics (iOPEN), and the Key Laboratory of Intelligent Interaction and Applications (Ministry of Industry and Information Technology), Northwestern Polytechnical University, China.
Neural Netw. 2022 Oct;154:508-520. doi: 10.1016/j.neunet.2022.07.025. Epub 2022 Jul 27.
We focus on the following problem: Given a collection of unlabeled facial images, group them into the individual identities where the number of subjects is not known. To this end, a Portable clustering algorithm based on Compact Neighbors called PCN is proposed. (1) Benefiting from the compact neighbor, the local density of each sample can be determined automatically and only one user-specified parameter, the number of nearest neighbors k, is involved in our model. (2) More importantly, the performance of PCN is not sensitive to the number of nearest neighbors. Therefore this parameter is relatively easy to determine in practical applications. (3) The computational overhead of PCN is O(nk(k+log(nk))) that is nearly linear with respect to the number of samples, which means it is easily scalable to large-scale problems. In order to verify the effectiveness of PCN on the face clustering problem, extensive experiments based on a two-stage framework (extracting features using a deep model and performing clustering in the feature space) have been conducted on 16 middle- and 5 large-scale benchmark datasets. The experimental results have shown the efficiency and effectiveness of the proposed algorithm, compared with state-of-the-art methods. [code].
给定一组未标记的人脸图像,将它们分为个体身份,其中主体的数量是未知的。为此,提出了一种基于 Compact Neighbors 的便携式聚类算法,称为 PCN。(1)受益于紧凑的邻居,每个样本的局部密度可以自动确定,并且我们的模型只涉及一个用户指定的参数,即最近邻居的数量 k。(2)更重要的是,PCN 的性能对最近邻居的数量不敏感。因此,在实际应用中,这个参数相对容易确定。(3)PCN 的计算开销为 O(nk(k+log(nk))),与样本数量大致呈线性关系,这意味着它可以轻松扩展到大规模问题。为了验证 PCN 在人脸聚类问题上的有效性,我们在 16 个中等规模和 5 个大规模基准数据集上基于两级框架(使用深度模型提取特征并在特征空间中进行聚类)进行了广泛的实验。实验结果表明,与最先进的方法相比,该算法具有效率和有效性。[代码]。