Sadiq Fatai Idowu, Selamat Ali, Ibrahim Roliana, Krejcar Ondrej
Faculty of Engineering, School of Computing, UTM & Media and Games Center of Excellence (MagicX), Universiti Teknologi Malaysia, 81310 Johor Bahru, Malaysia.
Faculty of Physical Sciences, Ambrose Alli University, P.M.B 14, 310101 Ekpoma, Edo State, Nigeria.
Entropy (Basel). 2019 May 13;21(5):487. doi: 10.3390/e21050487.
Sensor technology provides the real-time monitoring of data in several scenarios that contribute to the improved security of life and property. Crowd condition monitoring is an area that has benefited from this. The basic context-aware framework (BCF) uses activity recognition based on emerging intelligent technology and is among the best that has been proposed for this purpose. However, accuracy is low, and the false negative rate (FNR) remains high. Thus, the need for an enhanced framework that offers reduced FNR and higher accuracy becomes necessary. This article reports our work on the development of an enhanced context-aware framework (EHCAF) using smartphone participatory sensing for crowd monitoring, dimensionality reduction of statistical-based time-frequency domain (SBTFD) features, and enhanced individual behavior estimation (IBE). The experimental results achieved 99.1% accuracy and an FNR of 2.8%, showing a clear improvement over the 92.0% accuracy, and an FNR of 31.3% of the BCF.
传感器技术可在多种场景中提供数据的实时监测,有助于提高生命和财产安全。人群状况监测就是受益于此的一个领域。基本上下文感知框架(BCF)基于新兴智能技术进行活动识别,是为此目的所提出的最佳框架之一。然而,其准确率较低,误报率(FNR)仍然很高。因此,需要一个能降低误报率并提高准确率的增强框架。本文报告了我们在开发增强上下文感知框架(EHCAF)方面的工作,该框架使用智能手机参与式传感进行人群监测、基于统计的时频域(SBTFD)特征降维和增强个体行为估计(IBE)。实验结果的准确率达到了99.1%,误报率为2.8%,与基本上下文感知框架92.0%的准确率和31.3%的误报率相比有明显提升。