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Current practices of performing road inspections are time-consuming and labour-intensive. Road surfaces degrade on a daily basis as a result of the heavy traffic on them. This will not only impact the driver’s comfort but will also impact economic efficiency. To maintain roads as efficiently as possible, municipalities perform regular inspections. The aim of the project is to use machine learning to study and analyze different types of road defects and to automatically detect any road abnormalities. We will design, build and test an inspection system for this purpose. The system is equipped with a camera to collect video streams from different roads with and without defects. Then, the captured data will be analyzed using the Matlab machine learning toolbox to train and test the network. Finally, the system will provide recommended actions for the municipality related to actions required to fix/correct road defects. The approach is divided into 3 main tasks: Data acquisition, Data Training/Testing, and Dashboard Building and Testing.
The goal of this project is to design, build and test an inspection system for detecting road abnormalities, defects, and damages using machine learning. The proposed system aims to improve the efficiency of road inspections and reduce the time and labor required for the process. The system will be equipped with a camera to capture video streams from different roads, and the data will be analyzed using the Matlab machine learning toolbox to train and test the network. The output of the system will be recommended actions for the municipality to fix/correct any identified road defects. The approach will involve three main tasks: data acquisition, data training/testing, and dashboard building and testing. Ultimately, the proposed system will help to maintain roads more efficiently, enhance driver comfort, and improve economic efficiency. Additionally, the system will provide insights into the causes of road abnormalities in Indian roads, including pitfalls, sinks, flooding, and traffic congestion due to insufficient lanes in cities and towns.
├── LICENSE
├── README.md <- The top-level README for developers/collaborators using this project.
├── original <- Original Source Code of the challenge hosted by omdena. Can be used as a reference code for the current project goal.
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├── reports <- Folder containing the final reports/results of this project
│ └── README.md <- Details about final reports and analysis
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├── src <- Source code folder for this project
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├── data <- Datasets used and collected for this project
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├── docs <- Folder for Task documentations, Meeting Presentations and task Workflow Documents and Diagrams.
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├── references <- Data dictionaries, manuals, and all other explanatory references used
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├── tasks <- Master folder for all individual task folders
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├── visualizations <- Code and Visualization dashboards generated for the project
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└── results <- Folder to store Final analysis and modelling results and code.
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