In practical applications especially with safety requirement, some hand-held actions need to be monitored closely, including smoking cigarettes, dialing, eating, etc. Taking smoking cigarettes as example, existing smoke detection algorithms usually detect the cigarette or cigarette with hand as the target object only, which leads to low accuracy. In this paper, we propose an application-driven AI paradigm for hand-held action detection based on hierarchical object detection. It is a coarse-to-fine hierarchical detection framework composed of two modules. The first one is a coarse detection module with the human pose consisting of the whole hand, cigarette and head as target object. The followed second one is a fine detection module with the fingers holding cigarette, mouth area and the whole cigarette as target. Some experiments are done with the dataset collected from real-world scenarios, and the results show that the proposed framework achieve higher detection rate with good adaptation and robustness in complex environments.
翻译:在实际应用中,特别是在安全要求方面,需要密切监测一些手持行动,包括吸烟、拨号、吃饭等。以吸烟为例,现有烟雾检测算法通常只用手作为目标物检测香烟或香烟,结果导致精确度低。在本文中,我们提议了一个基于等级物体检测的手持行动检测应用驱动的AI范式。这是一个由两个模块组成的粗体到软体的等级检测框架。第一个模块是一个粗体的检测模块,由整个手、烟和头作为目标物体组成。第二个模块是一个精细的检测模块,手指拿着烟、口腔和整个香烟作为目标。一些实验用从现实世界情景中收集的数据集进行,结果显示,拟议的框架在复杂的环境中适应性强健健健。