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Uncooperative Gait Recognition Using Joint Bayesian

机译:基于联合贝叶斯的不合作步态识别

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Human gait, as a soft biometric, helps to recognize people by walking without subject cooperation. In this paper, we propose a more challenging uncooperative setting under which views of the gallery and probe are both unknown and mixed up (uncooperative setting). Joint Bayesian is adopted to model the view variance. We conduct experiments to evaluate the effectiveness of Joint Bayesian under the proposed uncooperative setting on OU-ISIR Large Population Dataset (OULP) and CASIA-B Dataset (CASIA-B). As a result, we confirm that Joint Bayesian significantly outperform the state-of-the-art methods for both identification and verification tasks even when the training subjects are different from the test subjects. For further comparison, the uncooperative protocol, experimental results, learning models, and test codes are available.
机译:人的步态是一种柔软的生物特征,有助于在没有受试者合作的情况下通过行走来识别人。在本文中,我们提出了一个更具挑战性的不合作环境,在这种情况下,画廊和探头的视图既未知又混杂(不合作环境)。采用联合贝叶斯模型对视图方差建模。我们进行了实验,以评估在OU-ISIR大人口数据集(OULP)和CASIA-B数据集(CASIA-B)的拟议不合作环境下联合贝叶斯算法的有效性。结果,我们确认即使训练对象与测试对象不同,联合贝叶斯算法也明显优于最新的识别和验证任务方法。为了进一步比较,可以使用不合作的协议,实验结果,学习模型和测试代码。

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