Our team are developing a new online test that analyses hand movement features associated with ageing that can be completed remotely from the research centre. To obtain hand movement features, participants will be asked to perform a variety of hand gestures using their own computer cameras. However, it is challenging to collect high quality hand movement video data, especially for older participants, many of whom have no IT background. During the data collection process, one of the key steps is to detect whether the participants are following the test instructions correctly and also to detect similar gestures from different devices. Furthermore, we need this process to be automated and accurate as we expect many thousands of participants to complete the test. We have implemented a hand gesture detector to detect the gestures in the hand movement tests and our detection mAP is 0.782 which is better than the state-of-the-art. In this research, we have processed 20,000 images collected from hand movement tests and labelled 6,450 images to detect different hand gestures in the hand movement tests. This paper has the following three contributions. Firstly, we compared and analysed the performance of different network structures for hand gesture detection. Secondly, we have made many attempts to improve the accuracy of the model and have succeeded in improving the classification accuracy for similar gestures by implementing attention layers. Thirdly, we have created two datasets and included 20 percent of blurred images in the dataset to investigate how different network structures were impacted by noisy data, our experiments have also shown our network has better performance on the noisy dataset.
翻译:我们的团队正在开发一个新的在线测试,分析与老龄化有关的手动特征,这些特征可以从研究中心远程完成。为了获得手动特征,将要求参与者使用自己的计算机相机执行各种手势。然而,收集高质量的手动视频数据,特别是针对老年参与者,其中许多人没有信息技术背景。在数据收集过程中,关键步骤之一是检测参与者是否正确遵守了测试指示,并检测不同装置的类似手势。此外,我们需要自动和准确的这一过程,因为我们期望成千上万的参与者完成测试。我们已经安装了手势探测器,以检测手动测试中的手势,我们的检测 mAP是0.782,这比最新技术要好。在这项研究中,我们处理了手动测试中收集的20 000张图像,并贴上了6 450张图像,以检测手动测试中不同的手势。本文有以下三项贡献:首先,我们比较和分析不同网络结构的性能,以便完成手势感检测。第二,我们多次尝试提高手动测试中的手势探测器,我们用手势测试的手势检测力探测器的精确度。我们尝试改进了20个模型的准确性,我们的数据模型的精确度,并成功地测量了20个数据结构。