IEEE Trans Image Process. 2017 Jun;26(6):2892-2904. doi: 10.1109/TIP.2017.2692524. Epub 2017 Apr 7.
Automatic target recognition has been widely studied over the years, yet it is still an open problem. The main obstacle consists in extended operating conditions, e.g.., depression angle change, configuration variation, articulation, and occlusion. To deal with them, this paper proposes a new classification strategy. We develop a new representation model via the steerable wavelet frames. The proposed representation model is entirely viewed as an element on Grassmann manifolds. To achieve target classification, we embed Grassmann manifolds into an implicit reproducing Kernel Hilbert space (RKHS), where the kernel sparse learning can be applied. Specifically, the mappings of training sample in RKHS are concatenated to form an overcomplete dictionary. It is then used to encode the counterpart of query as a linear combination of its atoms. By designed Grassmann kernel function, it is capable to obtain the sparse representation, from which the inference can be reached. The novelty of this paper comes from: 1) the development of representation model by the set of directional components of Riesz transform; 2) the quantitative measure of similarity for proposed representation model by Grassmann metric; and 3) the generation of global kernel function by Grassmann kernel. Extensive comparative studies are performed to demonstrate the advantage of proposed strategy.
自动目标识别多年来得到了广泛的研究,但它仍然是一个开放的问题。主要的障碍在于扩展的操作条件,例如,俯角变化、配置变化、铰接和遮挡。为了解决这些问题,本文提出了一种新的分类策略。我们通过可转向的小波框架开发了一种新的表示模型。所提出的表示模型完全被视为 Grassmann 流形上的一个元素。为了实现目标分类,我们将 Grassmann 流形嵌入到隐式再生核希尔伯特空间(RKHS)中,其中可以应用核稀疏学习。具体来说,训练样本在 RKHS 中的映射被连接起来,形成一个过完备的字典。然后,它被用来将查询的对应项编码为其原子的线性组合。通过设计的 Grassmann 核函数,它能够获得稀疏表示,从而进行推断。本文的新颖之处在于:1)通过 Riesz 变换的方向分量集开发表示模型;2)通过 Grassmann 度量对所提出的表示模型进行定量相似性度量;3)通过 Grassmann 核生成全局核函数。进行了广泛的比较研究,以证明所提出策略的优势。