SMART TRAFFIC MANAGEMENT SYSTEM

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Presentation transcript:

SMART TRAFFIC MANAGEMENT SYSTEM JamFree Progeek cup 1.0 TEAM MEMBERS- VAIBHAV KHANDELWAL DIVYANSHI MANGAL PRANAU KUMAR

CONTEXT/ SCOPE Traffic Management is an issue which impacts us almost daily. Use of technology and real time analysis can actually lead to a smooth traffic management. The common reason for traffic congestion is due to poor traffic prioritization. Let us take the scenario of Bengaluru. It is third most populous city of India. While the number of vehicles are increasing at a fast pace, the infrastructure in the city is not being able to match this growth. However, our solution to this problem is not limited to the Bengaluru city only. It can be used for other urban cities as well where traffic jams during rush hours are becoming a routine affair, especially in the internal sectors where long queues of vehicles can be seen stranded. Therefore, we have tried to address the problem with the help of our project wherein the focus would be to minimize the vehicular congestion. We have achieved this with the help of image processing that can be obtained from surveillance cameras and eventually to deploy a feedback mechanism in the working of the traffic lights where the density of the traffic would also be factored in the decision making process.

PROBLEM DESCRIPTION The number of vehicles using the road is increasing exponentially every day. Due to this reason, traffic congestion in urban areas like Bengaluru is becoming unavoidable these days. Inefficient management of traffic causes wastage of invaluable time, pollution, wastage of fuel, cost of transportation and stress to drivers, etc. Hence, design a system to avoid the above casualties thus preventing accidents, collisions, and traffic jams. Connect Smart Traffic Management System of the city and use the power of analytics in order to get smooth traffic management. Use real time analytics of data from these sources and link them to some trends so that traffic flow can be managed in a much better way.

ANALYSIS/ RESEARCH ON WHY PROBLEM EXISTS The main reasons for traffic congestion and delay are analysed as follows: Poor Traffic Management Lesser use of automated techniques More number of Vehicles Unrestrained demand Insufficient Capacity Hard coded traffic lights Large Red Light Delays

ANALYSIS/ RESEARCH ON WHY PROBLEM EXISTS – CONTD. After doing extensive research, we reached the conclusion that there are several drawbacks of earlier methods - Wastage of time by lighting green signal even when road is empty. Image processing removes such problem. Slight difficult to implement in real time because the accuracy of time calculation depends on relative position of camera. This project provides a solution to reduce traffic congestion on roads overriding the older system of hard coded lights which cause unwanted delays. Reducing congestion and waiting time will lessen the number of accidents and also reduces fuel consumption which in turn will help in controlling the air pollution. This will also provide data for future road design and construction or where improvements are required and which are urgent like which junction has higher waiting times.

PROPOSED SYSTEM We propose a technique that can be used for traffic control using image processing. Traffic density of lanes is calculated using image processing which is done of images of lanes that are captured using digital camera. According to the traffic densities on all roads, our model will allocate smartly the time period of green light for each road. We have chosen image processing for calculation of traffic density as cameras are very much cheaper than other devices such as sensors.

PROPOSED SYSTEM – CONTD. The steps involved in implementing the proposed system are given as follows: Image Acquisition Image Pre-Processing ->Image Resizing/Scaling -> RGB to GRAY Conversion Image Enhancement Edge Detection In our project we use “Canny Edge Detection Technique” because of its: Low error rate Single edge point response The Canny edge detection algorithm consist of the following basic steps; i. Smooth the input image with Gaussian filter. ii. Compute the gradient magnitude and angle images. iii. Apply non-maxima suppression to the gradient magnitude image. iv. Use double thresholding and connectivity analysis to detect and link edges Image Matching

PROPOSED SYSTEM- CONTD. Data Analytics will also be performed which will help in future traffic planning and analysis. HARDWARE ARCHITECTURE: We shall use Raspberry Pi that is connected to 4 sets of LEDs that represent the traffic lights. The captured images and the reference images are fed to the Raspberry Pi. In real implementation, we will have an automated way to do this via a CCTV camera. SOFTWARE ARCHITECTURE: Python OpenCV (Open Source Computer Vision Library) ThingSpeak Cloud (For data analytics)

FLOWCHART FOR RASPBERRY PI OPERATION

Given below are some of the images of the project:

LINKS TO SUPPORTING DOCUMENT GitHub Code Repository- https://github.com/pranau97/dynamic-traffic-cam Instructions on how to execute the code are included in the above mentioned GitHub Repository in the ReadMe File.

Let’s use technology to make our country move forward! Thank You! ProGeek Cup 1.0 Geeksforgeeks