CVAIJun 24, 2024

Bosch Street Dataset: A Multi-Modal Dataset with Imaging Radar for Automated Driving

arXiv:2407.12803v17 citations
Originality Synthesis-oriented
AI Analysis

This dataset facilitates research for automated driving and ADAS by providing unique radar data, though it is incremental as it builds on existing multi-modal datasets.

The paper introduces the Bosch Street Dataset (BSD), a multi-modal dataset with high-resolution imaging radar, lidar, and camera sensors to address the gap in radar data for automated driving, enabling research in object detection and sensor fusion across urban, rural, and highway environments.

This paper introduces the Bosch street dataset (BSD), a novel multi-modal large-scale dataset aimed at promoting highly automated driving (HAD) and advanced driver-assistance systems (ADAS) research. Unlike existing datasets, BSD offers a unique integration of high-resolution imaging radar, lidar, and camera sensors, providing unprecedented 360-degree coverage to bridge the current gap in high-resolution radar data availability. Spanning urban, rural, and highway environments, BSD enables detailed exploration into radar-based object detection and sensor fusion techniques. The dataset is aimed at facilitating academic and research collaborations between Bosch and current and future partners. This aims to foster joint efforts in developing cutting-edge HAD and ADAS technologies. The paper describes the dataset's key attributes, including its scalability, radar resolution, and labeling methodology. Key offerings also include initial benchmarks for sensor modalities and a development kit tailored for extensive data analysis and performance evaluation, underscoring our commitment to contributing valuable resources to the HAD and ADAS research community.

Foundations

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