Department of Media Intelligent, Osaka University, Ibaraki 567-0047, Japan.
Department of Electrical and Electronic Engineering, University of Dhaka, Dhaka 1000, Bangladesh.
Sensors (Basel). 2020 Apr 24;20(8):2424. doi: 10.3390/s20082424.
Wearable sensor-based systems and devices have been expanded in different application domains, especially in the healthcare arena. Automatic age and gender estimation has several important applications. Gait has been demonstrated as a profound motion cue for various applications. A gait-based age and gender estimation challenge was launched in the 12th IAPR International Conference on Biometrics (ICB), 2019. In this competition, 18 teams initially registered from 14 countries. The goal of this challenge was to find some smart approaches to deal with age and gender estimation from sensor-based gait data. For this purpose, we employed a large wearable sensor-based gait dataset, which has 745 subjects (357 females and 388 males), from 2 to 78 years old in the training dataset; and 58 subjects (19 females and 39 males) in the test dataset. It has several walking patterns. The gait data sequences were collected from three IMUZ sensors, which were placed on waist-belt or at the top of a backpack. There were 67 solutions from ten teams-for age and gender estimation. This paper extensively analyzes the methods and achieved-results from various approaches. Based on analysis, we found that deep learning-based solutions lead the competitions compared with conventional handcrafted methods. We found that the best result achieved 24.23% prediction error for gender estimation, and 5.39 mean absolute error for age estimation by employing angle embedded gait dynamic image and temporal convolution network.
基于可穿戴传感器的系统和设备已经在不同的应用领域得到了扩展,特别是在医疗保健领域。自动年龄和性别估计有几个重要的应用。步态已被证明是各种应用的重要运动线索。基于步态的年龄和性别估计挑战于 2019 年在第十二届国际模式识别协会生物识别会议(ICB)上发起。在这次竞赛中,来自 14 个国家的 18 个团队最初注册。这次竞赛的目标是找到一些智能方法来处理基于传感器的步态数据中的年龄和性别估计。为此,我们使用了一个大型基于可穿戴传感器的步态数据集,其中有 745 名参与者(357 名女性和 388 名男性),年龄在 2 至 78 岁之间,训练数据集;和 58 名参与者(19 名女性和 39 名男性)在测试数据集。它有几种行走模式。步态数据序列是从三个 IMUZ 传感器收集的,这些传感器放置在腰带或背包顶部。十个团队共提交了 67 个用于年龄和性别估计的解决方案。本文从各种方法广泛分析了方法和结果。基于分析,我们发现与传统手工方法相比,基于深度学习的解决方案在竞争中处于领先地位。我们发现,通过采用嵌入角度的步态动态图像和时间卷积网络,性别估计的最佳预测误差为 24.23%,年龄估计的平均绝对误差为 5.39。