TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK

Traffic congestion is a main problem that lead to serious impact such as material loss, psychological illness, and loss of time. Object detection is a problem to localize and classify objects in picture or video. Object detection can be use as an approach to solve traffic congestion. This can be...

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Main Author: Arjuna Purba, Regi
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/50196
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:50196
spelling id-itb.:501962020-09-23T08:43:20ZTRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK Arjuna Purba, Regi Indonesia Final Project Object Detection, Faster R-CNN, Single Shot Detector, Congestion Classifier INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/50196 Traffic congestion is a main problem that lead to serious impact such as material loss, psychological illness, and loss of time. Object detection is a problem to localize and classify objects in picture or video. Object detection can be use as an approach to solve traffic congestion. This can be done using object detection to get information about traffic density in traffic road. Object detection model can be used to detect and classify objects that causes congestion. The problem is how the model could detect objects and classify objects on input data and give output about traffic condition as CONGESTED or NORMAL. Faster R-CNN and Single Shot Detector Framework is framework to do object detection. This framework is based on Convolutional Neural Network architecture. In this research use Inception and Residual Network architecture. Through the design and implementation the result show that Faster R-CNN with the Inception architecture is the best model to detect object. This result is supported by the fact that this model have the highest accuracy among the other chosen model. This model get 0.88 of accuracy when the traffic is congested and 0.82 of accuracy when the traffic is normal. But, Single Shot Detector Framework get the fastest inference time. Single Shot Detector get 0.97 second of inference time when the road is congested and 0.87 second of inference time when the road is normal. Faster R-CNN framework with the Inception architecture is used as a model to detect traffic congestion. The strategy to classify traffic condition use number of object detected threshold and structural similarity threshold. From the implementation of the designed strategy show that the program is successful to classify traffic condition as CONGESTED and Normal with 0.75 of accuracy text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Traffic congestion is a main problem that lead to serious impact such as material loss, psychological illness, and loss of time. Object detection is a problem to localize and classify objects in picture or video. Object detection can be use as an approach to solve traffic congestion. This can be done using object detection to get information about traffic density in traffic road. Object detection model can be used to detect and classify objects that causes congestion. The problem is how the model could detect objects and classify objects on input data and give output about traffic condition as CONGESTED or NORMAL. Faster R-CNN and Single Shot Detector Framework is framework to do object detection. This framework is based on Convolutional Neural Network architecture. In this research use Inception and Residual Network architecture. Through the design and implementation the result show that Faster R-CNN with the Inception architecture is the best model to detect object. This result is supported by the fact that this model have the highest accuracy among the other chosen model. This model get 0.88 of accuracy when the traffic is congested and 0.82 of accuracy when the traffic is normal. But, Single Shot Detector Framework get the fastest inference time. Single Shot Detector get 0.97 second of inference time when the road is congested and 0.87 second of inference time when the road is normal. Faster R-CNN framework with the Inception architecture is used as a model to detect traffic congestion. The strategy to classify traffic condition use number of object detected threshold and structural similarity threshold. From the implementation of the designed strategy show that the program is successful to classify traffic condition as CONGESTED and Normal with 0.75 of accuracy
format Final Project
author Arjuna Purba, Regi
spellingShingle Arjuna Purba, Regi
TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
author_facet Arjuna Purba, Regi
author_sort Arjuna Purba, Regi
title TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
title_short TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
title_full TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
title_fullStr TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
title_full_unstemmed TRAFFIC CONGESTION DETECTION THROUGH OBJECT DETECTION APROACH USING FASTER R-CNN AND SINGLE SHOT DETECTOR FRAMEWORK
title_sort traffic congestion detection through object detection aproach using faster r-cnn and single shot detector framework
url https://digilib.itb.ac.id/gdl/view/50196
_version_ 1822000588880084992