Correctly recognizing the behaviors of children with Autism Spectrum Disorder (ASD) is of vital importance for the diagnosis of Autism and timely early intervention. However, the observation and recording during the treatment from the parents of autistic children may not be accurate and objective. In such cases, automatic recognition systems based on computer vision and machine learning (in particular deep learning) technology can alleviate this issue to a large extent. Existing human action recognition models can now achieve persuasive performance on challenging activity datasets, e.g. daily activity, and sports activity. However, problem behaviors in children with ASD are very different from these general activities, and recognizing these problem behaviors via computer vision is less studied. In this paper, we first evaluate a strong baseline for action recognition, i.e. Video Swin Transformer, on two autism behaviors datasets (SSBD and ESBD) and show that it can achieve high accuracy and outperform the previous methods by a large margin, demonstrating the feasibility of vision-based problem behaviors recognition. Moreover, we propose language-assisted training to further enhance the action recognition performance. Specifically, we develop a two-branch multimodal deep learning framework by incorporating the "freely available" language description for each type of problem behavior. Experimental results demonstrate that incorporating additional language supervision can bring an obvious performance boost for the autism problem behaviors recognition task as compared to using the video information only (i.e. 3.49% improvement on ESBD and 1.46% on SSBD).
翻译:正确认识自闭症谱系障碍儿童的行为对于诊断自闭症和及时早期干预至关重要。然而,自闭症儿童父母治疗期间的观察和记录可能并不准确和客观。在这种情况下,基于计算机视觉和机器学习(特别是深习)技术的自动识别系统可以在很大程度上缓解这一问题。现有的人类行动识别模型现在可以在具有挑战性的活动数据集(如日常活动和体育活动)上取得有说服力的绩效。然而,自闭症儿童的问题行为与这些一般活动非常不同,通过计算机视觉认识这些问题的行为的研究较少。在本文中,我们首先评估行动识别的强有力基线,即视频Swin变异器,在两种自闭症行为数据集(SSBD和ESBD)上,显示它能够实现高度的准确性并大大超越以往的方法,表明基于愿景的问题行为认识的可行性。此外,我们提议进行语言辅助培训,以进一步加强行动识别绩效。 具体而言,我们首先评估行动识别行动识别基准,即SBSBSB 将两种直观的SBA型自动识别结果,然后将SB 发展出一种明确的SB型自动识别工具。我们可以通过两种形式的自动识别语言的自动识别工具,将SBAltus-AD 。我们可以通过两种语言进行更多的自动识别任务来进行实验性识别。我们可以对每一式的确认。