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A9-Intersection
The A9-Intersection dataset is a real-world dataset made of two RSUs positioned at 7 meters height in an intersection in Garching, Germany. Each RSU has an Ouster OS1-64 LiDAR... -
V2X-Sim 2.0
The V2X-Sim 2.0 dataset is a synthetic dataset made with CARLA, containing 100 sequences, each of which has 100 samples containing point clouds obtained by 1 RSU positioned at... -
comma2k19 dataset
The comma2k19 dataset is used to evaluate the robustness of lane detection models under physical-world adversarial attacks in autonomous driving. -
FisheyeMODNet: Moving Object detection on Surround-view Cameras for Autonomou...
Moving Object Detection (MOD) dataset for fisheye cameras, focusing on autonomous driving scenes. -
DICE: Diverse Diffusion Model with Scoring for Trajectory Prediction
Road user trajectory prediction in dynamic environments is a challenging but crucial task for various applications, such as autonomous driving. One of the main challenges in... -
ApolloScape Dataset
The ApolloScape dataset is a large-scale dataset for autonomous driving, containing images and annotations. -
INTERACTION dataset
The INTERACTION dataset is a highly interactive driving dataset containing merges, roundabouts, and intersections. -
The rounD dataset
The rounD dataset contains trajectories from various locations in Germany captured at a frequency of 25 Hz. -
The highD dataset
A drone dataset of naturalistic vehicle trajectories on German highways for validation of highly automated driving systems. -
Uncertainty-Aware Model-Based Reinforcement Learning with Application to Auto...
The proposed uncertainty-aware model-based reinforcement learning framework is applied to end-to-end autonomous driving tasks. -
LAV Dataset
The LAV dataset is used to evaluate the robustness of the proposed Penalty-based Imitation Learning with Cross Semantics Generation approach. -
ROAD and SARAS-ESAD datasets for complex activity detection
A dataset for complex activity detection in autonomous driving and surgical robotics. -
Fishyscapes
Fishyscapes: A benchmark for safe semantic segmentation in autonomous driving with annotations for pedestrian and vehicle detection. -
MUAD: Multiple Uncertainties for Autonomous Driving
MUAD: A synthetic dataset for autonomous driving with multiple uncertainties and annotations for semantic segmentation, depth estimation, object detection, and instance... -
Stanford Drone Dataset
The Stanford Drone Dataset is a well-established benchmark for human trajectory prediction in bird’s eye view. The dataset consists of 20 scenes captured using a drone in... -
Safety-Critical Scenarios for Autonomous Driving
The dataset used in this paper is a collection of safety-critical scenarios for autonomous driving, generated using rare-event simulation techniques.