Human identification plays a prominent role in terms of security. In modern times security is becoming the key term for an individual or a country, especially for countries which are facing internal or external threats. Gait analysis is interpreted as the systematic study of the locomotive in humans. It can be used to extract the exact walking features of individuals. Walking features depends on biological as well as the physical feature of the object; hence, it is unique to every individual. In this work, gait features are used to identify an individual. The steps involve object detection, background subtraction, silhouettes extraction, skeletonization, and training 3D Convolution Neural Network on these gait features. The model is trained and evaluated on the dataset acquired by CASIA B Gait, which consists of 15000 videos of 124 subjects walking pattern captured from 11 different angles carrying objects such as bag and coat. The proposed method focuses more on the lower body part to extract features such as the angle between knee and thighs, hip angle, angle of contact, and many other features. The experimental results are compared with amongst accuracies of silhouettes as datasets for training and skeletonized image as training data. The results show that extracting the information from skeletonized data yields improved accuracy.
翻译:人类识别特征在安全方面发挥着突出作用。在现代,安全正在成为个人或国家的关键术语,特别是面临内部和外部威胁的国家。Gait分析被解释为对人体火车头的系统研究。它可以用来提取个人确切的行走特征。行走特征取决于物体的生物特征和物理特征;因此,对每个人来说都是独特的。在这项工作中,行走特征被用来识别个人。步骤涉及物体探测、背景减色、光影提取、骨架化和培训3D Convolution Neal网络的这些动作特征。模型根据CASIA B Gait获得的数据集进行培训和评价,该数据集由从11个不同角度采集的124个主题行走模式组成,从包和外套等物体上采集的15,000个视频组成。拟议方法更侧重于较低身体部分提取特征,如膝部和大腿之间的角、臀部角度、接触角度和许多其他特征。实验结果与Silhouette神经网络关于这些行踪特征的精度比较。该模型由CSIA B Gait提供的数据精度培训结果,以显示骨质图像的精度。