SlotFinder: A Spatio-temporal based Car Parking System

Mebin Rahman Fateha, Md. Saddam Hossain Mukta, M. Hossain, Mahmud Al Islam, Salekul Islam
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Abstract

Nowadays, the increasing number of vehicles and shortage of parking spaces have become an inescapable condition in big cities across the world. Car parking problem is not a new phenomenon, especially in a crowded city such as Dhaka, Bangladesh. Shortage of parking spaces leads to several problems such as road congestion, illegal parking on the streets, and fuel waste in searching for a free parking space. In order to overcome the parking problem, we develop a spatio-temporal based car parking system namely, SlotFinder. We collect the data of 408 buildings those have parking slots from seven different locations. We then cluster these data based on time and locations. Later, we train location wise vacant parking spaces by using stacked Long Short-Term Memory (LSTM) based on their temporal patterns. We also compare our technique with the baseline models and conduct an ablation analysis, which outperforms (lower RMSE and MAE of 0.29 and 0.24, respectively) than that of the previous approaches.
SlotFinder:一个基于时空的停车系统
如今,车辆数量的增加和停车位的短缺已经成为世界各地大城市不可避免的状况。停车问题并不是一个新现象,尤其是在像孟加拉国达卡这样拥挤的城市。停车位的短缺导致了道路拥堵、街道违规停车、寻找免费停车位造成燃料浪费等问题。为了解决停车问题,我们开发了一个基于时空的停车系统,即SlotFinder。我们从七个不同的地点收集了408栋有停车位的大楼的数据。然后我们根据时间和地点对这些数据进行聚类。然后,我们基于停车位的时间模式,使用堆叠长短期记忆(LSTM)来训练停车位的位置。我们还将我们的技术与基线模型进行了比较,并进行了消融分析,结果优于之前的方法(RMSE和MAE分别为0.29和0.24)。
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