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Three dimensional object recognition using a complex autoregressive model

机译:使用复杂的自回归模型进行三维物体识别

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Complex Partial Correlation (CPARCOR) features, derived from an autoregressive model, are known to provide exceptional position, scale, and rotation invariant (PSRI) properties for planar two dimensional (2-D) object recognition. Although autoregressive models have been successfully applied to numerous spatio-temporal recognition tasks, the effects of out-of-plane image rotations and known levels of occlusion have not been considered. This study investigates applications of the CPARCOR model to a five class problem of nonplanar 2-D views of 3-D objects. Recognition (based on CPARCOR features) of both single and multiple frames of imagery is performed using the hold-one-out error estimation method on a 1-Nearest Neighbor classifier. Direct comparisons to recognition based on low frequency Fourier magnitude features are made. Additionally, the effects of known levels of occlusion on the classification rate was examined using occluded nonplanar views and a template classifier. Results indicate that the CPARCOR model parameters provide useful shape-features for recognition of out-of-plane rotations. Displaying exceptional PSRI properties, the features are shown capable of classification by simple nonadaptive recognition schemes. The advantage of classification by a multiple-look technique over the traditional single-look method is dearly demonstrated. Feature space crowding is noted as the cause of unusual recognition rates for occluded-view tests. Although general trends are noted, optimal model order and selection of CPARCOR versus Fourier features are considered application dependent.
机译:已知自自回归模型衍生的复杂部分相关(CPARCOR)功能可为平面二维(2-D)对象识别提供出色的位置,比例和旋转不变(PSRI)属性。尽管自回归模型已成功应用于许多时空识别任务,但尚未考虑平面外图像旋转和已知遮挡水平的影响。这项研究调查了CPARCOR模型在3-D对象的非平面2-D视图的五类问题中的应用。图像的单帧和多帧识别(基于CPARCOR特征)是使用1-最近邻分类器上的保留一出错误估计方法进行的。直接与基于低频傅立叶幅值特征的识别进行比较。另外,使用遮挡的非平面视图和模板分类器检查了已知的遮挡水平对分类率的影响。结果表明,CPARCOR模型参数为识别平面外旋转提供了有用的形状特征。显示出出色的PSRI特性,显示的功能能够通过简单的非自适应识别方案进行分类。与传统的单眼看方法相比,通过多眼看技术进行分类的优势已得到充分证明。特征空间拥挤被认为是遮挡视力测试异常识别率的原因。尽管注意到了总体趋势,但是最佳模型顺序和CPARCOR与傅立叶特征的选择被认为是取决于应用程序的。

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