Recent image classification algorithms, by learning deep features from large-scale datasets, have achieved significantly better results comparing to the classic feature-based approaches. However, there are still various challenges of image classifications in practice, such as classifying noisy image or image-set queries and training deep image classification models over the limited-scale dataset. Instead of applying generic deep features, the model-based approaches can be more effective and data-efficient for robust image and image-set classification tasks, as various image priors are exploited for modeling the inter- and intra-set data variations while preventing over-fitting. In this work, we propose a novel Joint Statistical and Spatial Sparse representation, dubbed \textit{J3S}, to model the image or image-set data for classification, by reconciling both their local patch structures and global Gaussian distribution mapped into Riemannian manifold. To the best of our knowledge, no work to date utilized both global statistics and local patch structures jointly via joint sparse representation. We propose to solve the joint sparse coding problem based on the J3S model, by coupling the local and global image representations using joint sparsity. The learned J3S models are used for robust image and image-set classification. Experiments show that the proposed J3S-based image classification scheme outperforms the popular or state-of-the-art competing methods over FMD, UIUC, ETH-80 and YTC databases.
翻译:最近的图像分类算法,通过从大型数据集中学习深度特征,与传统的基于特征的方法相比,最近图像分类算法取得了显著的更好成果,但与传统的基于特征的方法相比,在实际中,图像分类方面仍然存在各种挑战,例如对吵闹的图像或图像设置查询进行分类,并在有限规模数据集中培训深度图像分类模型。模型为基础的方法不是应用通用深度特征,而是可以更加有效和数据效率,用于稳健的图像和图像设置分类任务,因为各种图像前科被用来建模内部和内部的数据变异,同时防止数据变异。在这项工作中,我们提议采用新的统计和空间采样联合代表制,以新的统计和空间采样联合统计和空间采样联合代表制来模拟图像分类和图像分类。 J-S-Text3 将本地和全球图像集制数据建模模型进行合并,用于联合使用的图像分类。