Objective: For lower arm amputees, robotic prosthetic hands promise to regain the capability to perform daily living activities. Current control methods based on physiological signals such as electromyography (EMG) are prone to yielding poor inference outcomes due to motion artifacts, muscle fatigue, and many more. Vision sensors are a major source of information about the environment state and can play a vital role in inferring feasible and intended gestures. However, visual evidence is also susceptible to its own artifacts, most often due to object occlusion, lighting changes, etc. Multimodal evidence fusion using physiological and vision sensor measurements is a natural approach due to the complementary strengths of these modalities. Methods: In this paper, we present a Bayesian evidence fusion framework for grasp intent inference using eye-view video, eye-gaze, and EMG from the forearm processed by neural network models. We analyze individual and fused performance as a function of time as the hand approaches the object to grasp it. For this purpose, we have also developed novel data processing and augmentation techniques to train neural network components. Results: Our results indicate that, on average, fusion improves the instantaneous upcoming grasp type classification accuracy while in the reaching phase by 13.66% and 14.8%, relative to EMG and visual evidence individually, resulting in an overall fusion accuracy of 95.3%. Conclusion: Our experimental data analyses demonstrate that EMG and visual evidence show complementary strengths, and as a consequence, fusion of multimodal evidence can outperform each individual evidence modality at any given time.
翻译:目标:对于低臂截肢者来说,机器人假肢手承诺重新获得开展日常生活活动的能力。目前基于诸如电传学(EMG)等生理信号的控制方法容易因运动装置、肌肉疲劳和许多其他因素而导致低推推力结果。视觉传感器是环境状态信息的主要来源,在推断可行和意图的手势方面可以发挥重要作用。然而,视觉证据也容易被自己的工艺品所感染,大多是由于物体的封闭、照明变化等等。使用生理和视觉传感器测量的多模式证据混合是一种自然方法,因为这些方法具有互补的优势。方法:在本文件中,我们用视觉视频、眼睛加热和由神经网络模型处理的前臂感知力模型提供一种掌握意图推断力的巴耶斯证据凝聚框架。我们分析个人和组合性表现的功能,即手接近目标以了解它的时间函数。为此,我们还开发了用于培养神经网络组件的新型数据处理和增强技术。 3 方法:在本文件中,我们通过视觉模型分析,在平均、视觉模型分析中显示平均的准确性,通过直径的精确性分析,在直径直径分析中显示整个图像的精确度上,我们的数据序列中,可以显示,在平均的精确度分析中显示整个的精确度上显示,整个的精确度,以整个的精确度为:第14。