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Clothing invariant human gait recognition using modified local optimal oriented pattern binary descriptor

机译:服装不变性人体步态识别使用修改的本地最佳导向图案二进制描述符

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摘要

Human gait is a behavioral characteristic which has received a large amount of consideration in recent times as a biometric identifier. The clothing variance is one of the most common covariate influences which can influence the performance of gait recognition approach in real-world scenarios. This paper proposes a gait recognition approach proficient in choosing information characteristics for individual identification under different clothing conditions. The proposed method constitutes of addressing the feature extraction technique by introducing a binary descriptor called as Modified Local Optimal Oriented Pattern (MLOOP). In the proposed approach, initially, the feature vectors such as histogram and horizontal width vector are extracted from MLOOP descriptor, and then the dimensionality of the feature vector is reduced to remove the irrelevant features. The performance of MLOOP was accessed against its predecessors. Obtained experimental results demonstrate that the MLOOP descriptor performs better than the previous binary descriptors. Furthermore, the performance analysis of the proposed approach was assessed on OU-ISIR B treadmill gait database and CASIA B gait database. Broad investigations demonstrate the viability of the proposed technique.
机译:人态步态是一种行为特征,其近期作为生物识别标识符获得了大量考虑因素。服装方差是最常见的协变量影响,可以影响步态识别方法在现实世界场景中的性能。本文提出了一种步态识别方法,精通选择不同衣服条件下个体鉴定的信息特征。所提出的方法通过引入称为修改的本地最佳定向模式(MLOOP)的二进制描述符来解决特征提取技术。在所提出的方法中,最初,从MLOOP描述符提取诸如直方图和水平宽度向量的特征向量,然后减少特征向量的维度以去除无关的特征。将MLOOP的表现与其前辈进行了访问。获得的实验结果表明,MLOOP描述符比以前的二进制描述符更好地执行。此外,在OU-ISIR B跑步机步态数据库和CASIA B步态数据库中评估了所提出方法的性能分析。广泛的调查证明了所提出的技术的可行性。

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