ARTÍCULO
TITULO

Optimization Technique for Pedestrian Data Extraction

Pritikana Das    
M. Parida    
Ashish Bhaskar    
V.K. Katiyar    

Resumen

Data extraction is an essential part of traffic flow parameter estimation. Estimation of traffic flow parameters, such as flow rate, density, and speed are carried out under certain measurement interval. Fundamental relationships among these parameters and capacity analysis are sensitive to the choice of appropriate measurement interval. In this study the impact of different measurement intervals on the results of pedestrian traffic flow parameter estimation have been compared to arrive at an optimized time interval. Analysis has been carried out with measurement intervals of 15 seconds, 30 seconds and 60 seconds. Based on the variation in estimated parameters the optimized measurement interval can be defined to improve pedestrian traffic flow modeling process. From the analysis it was observed that for small interval, extracted data were more scattered in nature and resulted in lesser coefficient of determination. For density data extraction it was observed that density can be estimated using the linear relationship between speed-density rather than extraction from video. In this process data extraction time can be reduced. Analysis proposed in this paper shall be useful in optimizing resources for pedestrian flow analysis.

 Artículos similares

       
 
Jinjia Zhou and Jian Yang    
Compressive Sensing (CS) has emerged as a transformative technique in image compression, offering innovative solutions to challenges in efficient signal representation and acquisition. This paper provides a comprehensive exploration of the key components... ver más
Revista: Information

 
Stefan Peev, Ivaylo Parushev and Ralitsa Yotsova    
Undecalcified bone histology is a valuable diagnostic method for studying bone microarchitecture and provides information on bone formation, resorption, and turnover. It has various clinical and research applications. Toluidine blue has been widely adopt... ver más
Revista: Applied Sciences

 
Gleice Kelly Barbosa Souza, Samara Oliveira Silva Santos, André Luiz Carvalho Ottoni, Marcos Santos Oliveira, Daniela Carine Ramires Oliveira and Erivelton Geraldo Nepomuceno    
Reinforcement learning is an important technique in various fields, particularly in automated machine learning for reinforcement learning (AutoRL). The integration of transfer learning (TL) with AutoRL in combinatorial optimization is an area that requir... ver más
Revista: Algorithms

 
Lin Zhang, Yanbin Gao and Lianwu Guan    
For seabed mapping, the prevalence of autonomous underwater vehicles (AUVs) employing side-scan sonar (SSS) necessitates robust navigation solutions. However, the positioning errors of traditional strapdown inertial navigation system (SINS) and Doppler v... ver más

 
Maolin Tang and Wei Li    
Wireless communication tower placement arises in many real-world applications. This paper investigates a new emerging wireless communication tower placement problem, namely, continuous space wireless communication tower placement. Unlike existing wireles... ver más
Revista: Future Internet