Despite their potential, markerless hand tracking technologies are not yet applied in practice to the diagnosis or monitoring of the activity in inflammatory musculoskeletal diseases. One reason is that the focus of most methods lies in the reconstruction of coarse, plausible poses for gesture recognition or AR/VR applications, whereas in the clinical context, accurate, interpretable, and reliable results are required. Therefore, we propose ShaRPy, the first RGB-D Shape Reconstruction and hand Pose tracking system, which provides uncertainty estimates of the computed pose to guide clinical decision-making. Our method requires only a light-weight setup with a single consumer-level RGB-D camera yet it is able to distinguish similar poses with only small joint angle deviations. This is achieved by combining a data-driven dense correspondence predictor with traditional energy minimization, optimizing for both, pose and hand shape parameters. We evaluate ShaRPy on a keypoint detection benchmark and show qualitative results on recordings of a patient.
翻译:尽管无标记手部跟踪技术具有潜在的应用价值,但它们尚未实际用于炎症性肌骨疾病的诊断或监测。其中一个原因是,大多数方法的重点在于重建用于手势识别或AR/VR应用程序的粗略、合理的姿势,而在临床环境中,需要精确、可解释和可靠的结果。因此,我们提出了ShaRPy,第一个RGB-D形状重建和手势跟踪系统,它提供了计算出的姿态的不确定性估计,以指导临床决策。我们的方法只需要一个轻量级设备和一个单一的消费级RGB-D相机,但它能够区分具有仅有小关节角度差异的相似姿势。这是通过将数据驱动的密集对应性预测器与传统的能量最小化相结合来实现的,优化姿势和手的形状参数。我们在关键点检测基准测试上评估了ShaRPy,并展示了病人记录的定性结果。