DriveIndia: An Object Detection Dataset for Diverse Indian Traffic Scenes
This dataset addresses the problem of robust object detection for autonomous driving in diverse Indian traffic conditions, representing an incremental contribution by providing new data for an existing task.
The authors introduced DriveIndia, a large-scale object detection dataset capturing the complexity of Indian traffic environments, with baseline results showing a top mAP50 of 78.7% using YOLO models.
We introduce DriveIndia, a large-scale object detection dataset purpose-built to capture the complexity and unpredictability of Indian traffic environments. The dataset contains 66,986 high-resolution images annotated in YOLO format across 24 traffic-relevant object categories, encompassing diverse conditions such as varied weather (fog, rain), illumination changes, heterogeneous road infrastructure, and dense, mixed traffic patterns and collected over 120+ hours and covering 3,400+ kilometers across urban, rural, and highway routes. DriveIndia offers a comprehensive benchmark for real-world autonomous driving challenges. We provide baseline results using state-of-the-art YOLO family models, with the top-performing variant achieving a mAP50 of 78.7%. Designed to support research in robust, generalizable object detection under uncertain road conditions, DriveIndia will be publicly available via the TiHAN-IIT Hyderabad dataset repository https://tihan.iith.ac.in/TiAND.html (Terrestrial Datasets -> Camera Dataset).