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Experimental Analysis using Deep Learning Techniques for Safety and Riskless Transport - A Sustainable Mobility Environment for Post Covid-19

机译:利用深层学习技术进行安全与无风险运输的实验分析 - 后Covid-19的可持续移动环境

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Safety living in the society is the greatest challenge due to COVID-19. Transportation has a crucial role in ensuring the safety of society. To bring back the normality of the society after COVID-19, proper wearing of a mask and strict distancing can play a vital role in the solutions of environment and health. Hence the development of smart and riskless transport with active surveillance of passengers to enforcing the wear of mask and maintaining the social distance can be attained through deep learning algorithms (thermal imaging and sensor technologies). In this proposed work, the various image patterns have analyzed using deep learning algorithms. Passengers' health and count inside the bus are measured using sensor technologies. Hence the development of this model has capable of ensuring social distancing among the people and avoiding the crowd for riskless transport.
机译:生活在社会中的安全是Covid-19由于Covid-19的最大挑战。运输在确保社会安全方面具有至关重要的作用。为了在Covid-19之后恢复社会的正常性,正确佩戴面具和严格的疏散可以在环境和健康的解决方案中发挥重要作用。因此,通过深度学习算法(热成像和传感器技术),可以获得具有激活乘客的智能和无风险运输,以实现乘客的主动监测,以执行掩模的磨损和保持社交距离。在该提出的工作中,使用深度学习算法分析了各种图像模式。使用传感器技术测量总线内部的乘客的健康和计数。因此,这种模式的发展能够确保人民之间的社会偏移,避免风险运输人群。

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