DISCOMAN: Dataset of Indoor SCenes for Odometry, Mapping And Navigation (1909.12146v1)
Abstract: We present a novel dataset for training and benchmarking semantic SLAM methods. The dataset consists of 200 long sequences, each one containing 3000-5000 data frames. We generate the sequences using realistic home layouts. For that we sample trajectories that simulate motions of a simple home robot, and then render the frames along the trajectories. Each data frame contains a) RGB images generated using physically-based rendering, b) simulated depth measurements, c) simulated IMU readings and d) ground truth occupancy grid of a house. Our dataset serves a wider range of purposes compared to existing datasets and is the first large-scale benchmark focused on the mapping component of SLAM. The dataset is split into train/validation/test parts sampled from different sets of virtual houses. We present benchmarking results forboth classical geometry-based and recent learning-based SLAM algorithms, a baseline mapping method, semantic segmentation and panoptic segmentation.
- Pavel Kirsanov (1 paper)
- Airat Gaskarov (1 paper)
- Filipp Konokhov (2 papers)
- Konstantin Sofiiuk (7 papers)
- Anna Vorontsova (19 papers)
- Igor Slinko (3 papers)
- Dmitry Zhukov (4 papers)
- Sergey Bykov (1 paper)
- Olga Barinova (8 papers)
- Anton Konushin (33 papers)