Cam4DOcc: Benchmark for Camera-Only 4D Occupancy Forecasting in Autonomous Driving Applications
Junyi Ma, Xieyuanli Chen, Jiawei Huang, Jingyi Xu, Zhen Luo, Jintao Xu, Weihao Gu, Rui Ai, Hesheng Wang

TL;DR
Cam4DOcc introduces a comprehensive benchmark for evaluating camera-only 4D occupancy forecasting, enabling better prediction of future scene states for autonomous driving safety and reliability.
Contribution
This paper presents the first benchmark for camera-only 4D occupancy forecasting, including datasets, baseline models, and evaluation protocols for future scene prediction.
Findings
Four diverse baseline models established for comparison.
Standardized evaluation protocol for future occupancy prediction.
Dataset and code released for research community use.
Abstract
Understanding how the surrounding environment changes is crucial for performing downstream tasks safely and reliably in autonomous driving applications. Recent occupancy estimation techniques using only camera images as input can provide dense occupancy representations of large-scale scenes based on the current observation. However, they are mostly limited to representing the current 3D space and do not consider the future state of surrounding objects along the time axis. To extend camera-only occupancy estimation into spatiotemporal prediction, we propose Cam4DOcc, a new benchmark for camera-only 4D occupancy forecasting, evaluating the surrounding scene changes in a near future. We build our benchmark based on multiple publicly available datasets, including nuScenes, nuScenes-Occupancy, and Lyft-Level5, which provides sequential occupancy states of general movable and static objects,…
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Taxonomy
TopicsAdvanced Neural Network Applications · Vehicle emissions and performance
