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Main Authors: CHINTALA, SRIDHAR, Anupoju Harshita, Lakshmi Naga Durga, Mamidala, Geethika
Format: Recurso digital
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Published: Zenodo 2026
Online Access:https://doi.org/10.5281/zenodo.19286465
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author CHINTALA, SRIDHAR
Anupoju Harshita, Lakshmi Naga Durga
Mamidala, Geethika
author_facet CHINTALA, SRIDHAR
Anupoju Harshita, Lakshmi Naga Durga
Mamidala, Geethika
contents <p>This dataset contains 10000 road scene images collected from forward-facing driving videos on national highways in India. Each image presents a combined view consisting of the original frame and the corresponding processed output generated using a lane center deviation (LCD) algorithm. The left side of each image represents the original road scene, while the right side shows the detected lane boundaries, estimated lane center, and the computed deviation of the vehicle from the lane center. The dataset is generated using a classical image processing pipeline implemented in Python with OpenCV, including grayscale conversion, Gaussian filtering, edge detection, region of interest selection, and Hough transform-based lane detection. All images are stored in a single directory with a consistent naming convention and resolution. The dataset enables direct visual comparison between input images and their corresponding lane detection outputs within the same frame. This dataset can be used for training, validation, and benchmarking of computer vision and machine learning models for lane detection, lane positioning, and Advanced Driver Assistance Systems (ADAS).</p>
format Recurso digital
id zenodo_https___doi_org_10_5281_zenodo_19286465
institution Zenodo
language
publishDate 2026
publisher Zenodo
record_format zenodo
spellingShingle Lane detection dataset with lane center deviation for ADAS applications
CHINTALA, SRIDHAR
Anupoju Harshita, Lakshmi Naga Durga
Mamidala, Geethika
<p>This dataset contains 10000 road scene images collected from forward-facing driving videos on national highways in India. Each image presents a combined view consisting of the original frame and the corresponding processed output generated using a lane center deviation (LCD) algorithm. The left side of each image represents the original road scene, while the right side shows the detected lane boundaries, estimated lane center, and the computed deviation of the vehicle from the lane center. The dataset is generated using a classical image processing pipeline implemented in Python with OpenCV, including grayscale conversion, Gaussian filtering, edge detection, region of interest selection, and Hough transform-based lane detection. All images are stored in a single directory with a consistent naming convention and resolution. The dataset enables direct visual comparison between input images and their corresponding lane detection outputs within the same frame. This dataset can be used for training, validation, and benchmarking of computer vision and machine learning models for lane detection, lane positioning, and Advanced Driver Assistance Systems (ADAS).</p>
title Lane detection dataset with lane center deviation for ADAS applications
url https://doi.org/10.5281/zenodo.19286465