Road Extraction from satellite imagery plays a crucial role in various applications ranging from urban planning to traffic monitoring and infrastructure development. In this project, we propose a method for road extraction using satellite images, aiming to produce clear and accurate representations of road networks. The process begins with acquiring high-resolution satellite images covering the target area. These images are preprocessed to enhance their quality and reduce noise, ensuring optimal input for subsequent analysis. Next, we employ advanced image processing techniques and machine learning algorithms to extract road features from the satellite imagery. One of the key steps in our approach is feature extraction, where we identify distinct characteristics associated with roads such as color, texture, and spatial patterns. By leveraging convolutional neural networks (CNNs) and other deep learning architectures, we train models to recognize these features and distinguish roads from other elements in theimages. Once the road features are detected, we employ segmentation algorithms to separate the roads from the surrounding environment effectively. This segmentation process involves delineating the boundaries of road networks, ensuring that the extracted roads align accurately with their real-world counterparts. Furthermore, to enhance the visual representation of the extracted roads, we implement highlighting techniques that emphasize the road features in the satellite images. This enhancement not only improves the visibility of roads but also facilitates their interpretation and analysis by end-users. The effectiveness of our approach is evaluated through extensive experimentation on diverse satellite imagery datasets covering various geographic regions and environmental conditions. Quantitative metrics such as precision, recall, and F1-score are utilized to assess the accuracy of road extraction results. Overall, our project demonstrates a robust and efficient method for road extraction from satellite images, offering valuable insights for urban planning, transportation management, and disaster response. By providingaccurate and detailed road maps derived from satellite imagery, our approach contributes to improving decision-making processes and enhancing the efficiency of various applications reliant on spatial data analysis.
V. SatyanarayanaCh.Gopi ChandanaK. BindushaD PadmanabhuduG Shahanaaz Bhanu
Arezou AkhtarmaneshDariush Abbasi‐MoghadamAlireza SharifiMohsen Hazrati YadkouriAqil TariqLinlin Lu
D. SubhashiniV. B. S. Srilatha Indira Dutt