Date of Publication

9-2021

Document Type

Master's Thesis

Degree Name

Master of Science in Electronics and Communications Engineering

Subject Categories

Electrical and Computer Engineering | Electrical and Electronics

College

Gokongwei College of Engineering

Department/Unit

Electronics And Communications Engg

Thesis Advisor

Jay Robert B. Del Rosario

Defense Panel Chair

Argel A. Bandala

Defense Panel Member

Jose Martin Z. Maningo
Robert Kerwin C. Billones

Abstract/Summary

Bus intelligent systems are an important aspect of improving the existing systems to understand and gather information. Informed decisions then could be made using the system. The information system is comprised of a vision-based bus passenger counter, a bus density mapper, and a GPS tracker to analyze its locations and passenger count data. The bus counter used Scaled YOLOv4 and FastMOT tracking in counting in 3 lighting conditions from PCDS dataset. The density mapper used Bayesian Crowd Counting model with a Mish activation trained with mall dataset to display and determine density. Lastly, the GPS data is processed with T-DBSCAN data clustering to display relevant stops and trajectories. The processes are simulated using open-sourced data to log to a database for storage and analysis. Passenger counter performs at 88.00%, 83.78%, 90.32% at normal, noisy, and night conditions. Bayesian VGG-Mish video heatmap is visually better compared to using ReLU and Swish. Lastly, the GPS clustering, although not contextualized, is able to output trajectory stops with its arrival time and departure at the location.

Abstract Format

html

Language

English

Format

Electronic

Physical Description

xvii, 130 leaves, color illustrations

Keywords

Intelligent transportation systems; Global Positioning System; Transportation—Passenger traffic

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Embargo Period

10-15-2021

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