TL;DR
The ApolloScape dataset provides a large, richly labeled collection of real-world driving scenes to advance autonomous vehicle perception, enabling multi-task learning and sensor fusion research.
Contribution
This paper introduces the ApolloScape dataset with extensive labels and tools, and demonstrates sensor fusion and multi-task learning for improved autonomous driving perception.
Findings
Sensor fusion improves localization accuracy.
Multi-task learning enhances perception robustness.
Large-scale dataset accelerates autonomous driving research.
Abstract
Autonomous driving has attracted tremendous attention especially in the past few years. The key techniques for a self-driving car include solving tasks like 3D map construction, self-localization, parsing the driving road and understanding objects, which enable vehicles to reason and act. However, large scale data set for training and system evaluation is still a bottleneck for developing robust perception models. In this paper, we present the ApolloScape dataset [1] and its applications for autonomous driving. Compared with existing public datasets from real scenes, e.g. KITTI [2] or Cityscapes [3], ApolloScape contains much large and richer labelling including holistic semantic dense point cloud for each site, stereo, per-pixel semantic labelling, lanemark labelling, instance segmentation, 3D car instance, high accurate location for every frame in various driving videos from multiple…
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