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Automated target tracking and recognition using coupled view and identity manifolds for shape representation

机译:使用耦合的视图和身份流形进行形状表示的自动目标跟踪和识别

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摘要

We propose a new couplet of identity and view manifolds for multi-view shape modeling that is applied to automated target tracking and recognition (ATR). The identity manifold captures both inter-class and intra-class variability of target shapes, while a hemispherical view manifold is involved to account for the variability of viewpoints. Combining these two manifolds via a non-linear tensor decomposition gives rise to a new target generative model that can be learned from a small training set. Not only can this model deal with arbitrary view/pose variations by traveling along the view manifold, it can also interpolate the shape of an unknown target along the identity manifold. The proposed model is tested against the recently released SENSIAC ATR database and the experimental results validate its efficacy both qualitatively and quantitatively.
机译:我们为多视图形状建模提出了一套新的身份和视图流形对,该对联已应用于自动目标跟踪和识别(ATR)。身份流形捕获目标形状的类间和类内变化,而半球视图流形则涉及视点的变化。通过非线性张量分解将这两个流形结合起来,可以产生一个新的目标生成模型,该模型可以从一个小的训练集中学习。该模型不仅可以通过沿视图流形移动来处理任意视图/姿势变化,还可以沿身份流形内插未知目标的形状。针对最近发布的SENSIAC ATR数据库测试了所提出的模型,实验结果从定性和定量方面验证了其有效性。

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