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Head Pose Estimation Based on Random Forests for Multiclass Classification

机译:基于随机森林的头姿估计用于多类分类

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Head pose estimation remains a unique challenge for computer vision system due to identity variation, illumination changes, noise, etc. Previous statistical approaches like PCA, linear discriminative analysis (LDA) and machine learning methods, including SVM and Adaboost, cannot achieve both accuracy and robustness that well. In this paper, we propose to use Gabor feature based random forests as the classification technique since they naturally handle such multi-class classification problem and are accurate and fast. The two sources of randomness, random inputs and random features, make random forests robust and able to deal with large feature spaces. Besides, we implement LDA as the node test to improve the discriminative power of individual trees in the forest, with each node generating both constant and variant number of children nodes. Experiments are carried out on two public databases to show the proposed algorithm outperforms other approaches in both accuracy and computational efficiency.
机译:由于身份变化,照明变化,噪声等,头部姿势估计仍然是计算机视觉系统面临的独特挑战。以前的统计方法(例如PCA,线性判别分析(LDA)和机器学习方法,包括SVM和Adaboost)无法同时达到准确性和鲁棒性很好。在本文中,我们建议使用基于Gabor特征的随机森林作为分类技术,因为它们可以自然地处理此类多分类问题,并且准确,快速。随机性的两个来源(随机输入和随机特征)使随机森林变得健壮并能够处理较大的特征空间。此外,我们将LDA用作节点测试,以提高森林中单个树的判别能力,每个节点都生成恒定数量和可变数量的子节点。在两个公共数据库上进行的实验表明,该算法在准确性和计算效率上均优于其他方法。

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