The asymmetrical retrieval setting is a well suited solution for resource constrained face recognition. In this setting a large model is used for indexing the gallery while a lightweight model is used for querying. The key principle in such systems is ensuring that both models share the same embedding space. Most methods in this domain are based on knowledge distillation. While useful, they suffer from several drawbacks: they are upper-bounded by the performance of the single best model found and cannot be extended to use an ensemble of models in a straightforward manner. In this paper we present an approach that does not rely on knowledge distillation, rather it utilizes embedding transformation models. This allows the use of N independently trained and diverse gallery models (e.g., trained on different datasets or having a different architecture) and a single query model. As a result, we improve the overall accuracy beyond that of any single model while maintaining a low computational budget for querying. Additionally, we propose a gallery image rejection method that utilizes the diversity between multiple transformed embeddings to estimate the uncertainty of gallery images.
翻译:摘要:不对称检索设置是资源受限的人脸识别的一种有效解决方案。在这种设置中,用于索引图库的是一个大型模型,而查询则使用一个轻量级模型。这些系统的关键原则是确保两个模型共享同一嵌入空间。该领域中的大多数方法都是基于知识蒸馏的。虽然这些方法很有用,但它们有一些缺点:性能被限制在单个最佳模型的表现上,并且不能简单地扩展到使用模型集合。本文提出的方法不依赖于知识蒸馏,而是利用嵌入转换模型。这允许使用N个独立训练的且具有不同架构或在不同数据集上训练的画廊模型和一个查询模型。因此,我们提高了整体准确性,超过了任何单个模型的准确性,同时保持了低的查询计算成本。此外,我们提出了一种画廊图像拒绝方法,该方法利用多个变换嵌入之间的多样性来估计画廊图像的不确定性。