GaitAGE: Gait Age and Gender Estimation Based on an Age- and Gender-Specific 3D Human Model

Xiang Li;Yasushi Makihara;Chi Xu;Yasushi Yagi
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Abstract

Gait-based human age and gender estimation has potential applications in visual surveillance, such as searching for specific pedestrian groups and automatically counting customers by different ages/genders. Unlike most existing methods that exploit widely used appearance-based gait features (e.g., gait energy image and silhouettes) or simple model-based gait features (e.g., leg length, stride width/frequency, and head-to-body ratio), we explore a recently popular 3D human mesh model (i.e., skinned multi-person linear model (SMPL)), which is more robust to various covariates (e.g., view angles). Furthermore, instead of the commonly used gender-neutral SMPL model, we propose a simple yet effective method to generate more realistic age- and gender-specific human mesh models by interpolating among male, female, and infant SMPL models using two learned age and gender weights. The age weight controls the proportion of importance between male/female and infant models, which is learned in a data-driven scheme by considering the paired relation between ground-truth ages and age weights. The gender weight controls the proportion of importance between male and female models, which indicates the gender probability. Then, we explore the use of generated realistic mesh models for age and gender estimation. Finally, the human mesh reconstruction and age and gender estimation modules are integrated into a unified end-to-end framework for training and testing. The experimental results on the OU-MVLP and FVG datasets demonstrated that the proposed method achieved both good mesh reconstruction and state-of-the-art age and gender estimation results.
步态:基于年龄和性别特定的3D人体模型的步态年龄和性别估计
基于步态的人类年龄和性别估计在视觉监控中有潜在的应用,例如搜索特定的行人群体和根据不同年龄/性别自动计数顾客。与大多数现有方法利用广泛使用的基于外观的步态特征(例如,步态能量图像和轮廓)或简单的基于模型的步态特征(例如,腿长,步幅/频率和头身比)不同,我们探索了最近流行的3D人体网格模型(即皮肤多人线性模型(SMPL)),该模型对各种协变量(例如,视角)更具鲁棒性。此外,我们提出了一种简单而有效的方法来代替常用的性别中立的SMPL模型,通过使用两个学习到的年龄和性别权重在男性、女性和婴儿SMPL模型之间进行插值,生成更真实的年龄和性别特定的人体网格模型。年龄权重控制了男女模型和婴儿模型之间的重要性比例,该比例是在数据驱动方案中通过考虑基本真实年龄和年龄权重之间的配对关系来学习的。性别权重控制着男女模型的重要性比例,表示性别概率。然后,我们探索使用生成的真实网格模型进行年龄和性别估计。最后,将人体网格重建和年龄、性别估计模块集成到统一的端到端框架中进行训练和测试。在OU-MVLP和FVG数据集上的实验结果表明,该方法获得了良好的网格重建和最先进的年龄和性别估计结果。
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CiteScore
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