LETHA: Learning from High Quality Inputs for 3D Pose Estimation in Low Quality Images

Adrián Peñate Sánchez, F. Moreno-Noguer, J. Andrade-Cetto, F. Fleuret
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引用次数: 4

Abstract

We introduce LETHA (Learning on Easy data, Test on Hard), a new learning paradigm consisting of building strong priors from high quality training data, and combining them with discriminative machine learning to deal with low-quality test data. Our main contribution is an implementation of that concept for pose estimation. We first automatically build a 3D model of the object of interest from high-definition images, and devise from it a pose-indexed feature extraction scheme. We then train a single classifier to process these feature vectors. Given a low quality test image, we visit many hypothetical poses, extract features consistently and evaluate the response of the classifier. Since this process uses locations recorded during learning, it does not require matching points anymore. We use a boosting procedure to train this classifier common to all poses, which is able to deal with missing features, due in this context to self-occlusion. Our results demonstrate that the method combines the strengths of global image representations, discriminative even for very tiny images, and the robustness to occlusions of approaches based on local feature point descriptors.
LETHA:从低质量图像的3D姿态估计的高质量输入中学习
我们介绍了LETHA (Learning on Easy data, Test on Hard),这是一种新的学习范式,它包括从高质量的训练数据中构建强先验,并将它们与判别机器学习相结合,以处理低质量的测试数据。我们的主要贡献是实现了姿态估计的概念。我们首先从高清图像中自动建立感兴趣对象的三维模型,并设计了一个基于姿态索引的特征提取方案。然后我们训练一个分类器来处理这些特征向量。给定低质量的测试图像,我们访问许多假设的姿势,一致地提取特征并评估分类器的响应。由于这个过程使用的是在学习过程中记录的位置,因此不再需要匹配点。我们使用一个增强过程来训练这个对所有姿势都通用的分类器,它能够处理由于这种情况下的自遮挡而缺失的特征。我们的研究结果表明,该方法结合了全局图像表示的优势,即使对非常微小的图像也具有判别性,以及基于局部特征点描述符的方法对遮挡的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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