一种基于混合学习方法的鲁棒步态识别方法

Yesodha. P, J. Mohana
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引用次数: 0

摘要

无模型识别人类步态的方法依赖于跟踪运动中的人的形状和速度。使用适当的低分辨率照片进行远距离识别是这种方法的优势。利用该方法从步态帧中提取步态特征是一件轻而易举的事情。这种无模型方法可以从多个角度进行探讨。本文的目标是开发一种新的步态识别方法,称为“混合学习分类器”,将人工智能技术与学习原理(HLC)相结合。首先,利用该方法从每一帧中识别出行走的人的二值轮廓图。其次,使用图像处理技术从每个单独的帧中提取特征。这里讨论的重要特征是身高,手和腿的长度,以及左右和左右的距离。最后,以评价和实践的形式进行了高效液相色谱的应用。在选择训练模型或调整与此相关的许多参数时,我们已经不再需要使用简化训练向量。我们所有的研究都利用了我们的步态数据库。根据哪些数据集用于训练,哪些数据集用于测试,可能会得出不同的结论。本文的结论部分提供了适当的验证一切说,以图形和精确的描述。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel and Robust Gait Recognition method based on Hybrid Learning Methodology
Model-free methods for recognizing human gait rely on tracking the form and velocity of the person in motion. Recognizability at far distances with suitably low-resolution photos is a strength of this method. Extracting gait characteristics from gait frames using this method is a breeze. This model-free method can be approached from several angles. This paper's goal is to develop a novel approach to gait identification, dubbed a “Hybrid Learning Classifier,” that combines an AI technique with learning principles (HLC). First, a binary outline picture of a walking human is recognized from each frame using this approach. Second, an image processing technique is used to extract features from each individual frame. Important characteristics discussed here are stature, hand and leg length, and left-right and right-left distances. Finally, HLC is put to use in the form of evaluation and practice. We've done away with the need to use a reductant training vector when choosing a model to train on or adjusting any of the many parameters associated with doing so. All of our research here utilizes our gait database. Depending on which datasets are used for training and which for testing, different conclusions might be drawn. This paper's concluding portion offers appropriate verification of everything said, presented graphically and with precise description.
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