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metadata
license: cc-by-nc-4.0
configs:
  - config_name: default
    data_files:
      - split: test
        path: test.csv

SpatialLM Testset

Project page | Paper | Code

We provide a test set of 107 preprocessed point clouds and their corresponding GT layouts, point clouds are reconstructed from RGB videos using MASt3R-SLAM. SpatialLM-Testset is quite challenging compared to prior clean RGBD scan datasets due to the noises and occlusions in the point clouds reconstructed from monocular RGB videos.

exmaple a exmaple b exmaple c exmaple d

Folder Structure

Outlines of the dataset files:

project-root/
β”œβ”€β”€ pcd/*.ply                   # Reconstructed point cloud PLY files
β”œβ”€β”€ layout/*.txt                # GT FloorPlan Layout
β”œβ”€β”€ benchmark_categories.tsv    # Category mappings for evaluation
└── test.csv                    # Metadata CSV file with columns id, pcd, layout

Usage

Use the SpatialLM code base for reading the point cloud and layout data.

from spatiallm import Layout
from spatiallm.pcd import load_o3d_pcd

# Load Point Cloud
point_cloud = load_o3d_pcd(args.point_cloud)

# Load Layout
with open(args.layout, "r") as f:
    layout_content = f.read()
layout = Layout(layout_content)

Visualization

Use rerun to visualize the point cloud and the GT structured 3D layout output:

python visualize.py --point_cloud pcd/scene0000_00.ply --layout layout/scene0000_00.txt --save scene0000_00.rrd
rerun scene0000_00.rrd