Continuous Pose Estimation with a Spatial Ensemble of Fisher Regressors

Michele Fenzi, L. Leal-Taixé, J. Ostermann, T. Tuytelaars
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引用次数: 9

Abstract

In this paper, we treat the problem of continuous pose estimation for object categories as a regression problem on the basis of only 2D training information. While regression is a natural framework for continuous problems, regression methods so far achieved inferior results with respect to 3D-based and 2D-based classification-and-refinement approaches. This may be attributed to their weakness to high intra-class variability as well as to noisy matching procedures and lack of geometrical constraints. We propose to apply regression to Fisher-encoded vectors computed from large cells by learning an array of Fisher regressors. Fisher encoding makes our algorithm flexible to variations in class appearance, while the array structure permits to indirectly introduce spatial context information in the approach. We formulate our problem as a MAP inference problem, where the likelihood function is composed of a generative term based on the prediction error generated by the ensemble of Fisher regressors as well as a discriminative term based on SVM classifiers. We test our algorithm on three publicly available datasets that envisage several difficulties, such as high intra-class variability, truncations, occlusions, and motion blur, obtaining state-of-the-art results.
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基于Fisher回归量空间集合的连续姿态估计
在本文中,我们将对象类别的连续姿态估计问题视为仅基于二维训练信息的回归问题。虽然回归是处理连续问题的自然框架,但迄今为止,相对于基于3d和基于2d的分类和细化方法,回归方法的效果较差。这可能是由于它们的弱点是高类内变异性,以及嘈杂的匹配过程和缺乏几何约束。我们建议通过学习一组Fisher回归量,将回归应用于从大细胞计算的Fisher编码向量。Fisher编码使我们的算法能够灵活地适应类外观的变化,而数组结构允许在方法中间接引入空间上下文信息。我们将我们的问题表述为MAP推理问题,其中似然函数由基于Fisher回归集合生成的预测误差的生成项和基于SVM分类器的判别项组成。我们在三个公开可用的数据集上测试了我们的算法,这些数据集设想了几个困难,如高类内可变性、截断、闭塞和运动模糊,获得了最先进的结果。
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