Alam Ekram, Sufian Abu, Dutta Paramartha, Leo Marco, Hameed Ibrahim A
Department of Computer Science, Gour Mahavidyalaya, Malda, West Bengal 732142, India.
Department of Computer & System Sciences, Visva-Bharati, Santiniketan, West Bengal 731235, India.
Data Brief. 2024 Sep 2;57:110892. doi: 10.1016/j.dib.2024.110892. eCollection 2024 Dec.
The population of older adults (elders) is increasing at a breakneck pace worldwide. This surge presents a significant challenge in providing adequate care for elders due to the scarcity of human caregivers. Unintentional falls of humans are critical health issues, especially for elders. Detecting falls and providing assistance as early as possible is of utmost importance. Researchers worldwide have shown interest in designing a system to detect falls promptly especially by remote monitoring, enabling the timely provision of medical help. The dataset 'GMDCSA-24' has been created to support the researchers on this topic to develop models to detect falls and other activities. This dataset was generated in three different natural home setups, where Falls and Activities of Daily Living were performed by four subjects (actors). To bring the versatility, the recordings were done at different times and lighting conditions: during the day when there is ample light and at night when there is low light in addition, the subjects wear different sets of clothes in the dataset. The actions were captured using the low-cost 0.92 Megapixel webcam. The low-resolution video clips make it suitable for use in real-time systems with fewer resources without any compression or processing of the clips. Users can also use this dataset to check the robustness and generalizability of a system for false positives since many ADL clips involve complex activities that may be falsely detected as falls. These complex activities include sleeping, picking up an object from the ground, doing push-ups, etc. The dataset contains 81 falls and 79 ADL video clips performed by four subjects.
全球老年人的数量正在以惊人的速度增长。由于人力护理人员的短缺,这种激增给为老年人提供充分护理带来了重大挑战。意外跌倒对人类来说是严重的健康问题,尤其是对老年人。尽早检测跌倒并提供援助至关重要。世界各地的研究人员都对设计一种能够迅速检测跌倒的系统表现出兴趣,特别是通过远程监测,以便能够及时提供医疗帮助。“GMDCSA - 24”数据集的创建是为了支持研究人员在这个主题上开发检测跌倒和其他活动的模型。该数据集是在三种不同的自然家庭环境中生成的,其中跌倒和日常生活活动由四名受试者(演员)进行。为了具备通用性,记录是在不同时间和光照条件下进行的:白天光线充足时以及夜晚光线较暗时,此外,数据集中的受试者穿着不同的服装。使用低成本的0.92百万像素网络摄像头捕捉动作。低分辨率视频片段使其适用于资源较少的实时系统,无需对片段进行任何压缩或处理。由于许多日常生活活动片段包含可能被误检测为跌倒的复杂活动,用户还可以使用这个数据集来检查系统对误报的鲁棒性和通用性。这些复杂活动包括睡觉、从地上捡起物体、做俯卧撑等。该数据集包含由四名受试者执行的81次跌倒和79个日常生活活动视频片段。