FCAF3D: Fully Convolutional Anchor-Free 3D Object Detection

1 Dec 2021  ·  Danila Rukhovich, Anna Vorontsova, Anton Konushin ·

Recently, promising applications in robotics and augmented reality have attracted considerable attention to 3D object detection from point clouds. In this paper, we present FCAF3D - a first-in-class fully convolutional anchor-free indoor 3D object detection method. It is a simple yet effective method that uses a voxel representation of a point cloud and processes voxels with sparse convolutions. FCAF3D can handle large-scale scenes with minimal runtime through a single fully convolutional feed-forward pass. Existing 3D object detection methods make prior assumptions on the geometry of objects, and we argue that it limits their generalization ability. To get rid of any prior assumptions, we propose a novel parametrization of oriented bounding boxes that allows obtaining better results in a purely data-driven way. The proposed method achieves state-of-the-art 3D object detection results in terms of mAP@0.5 on ScanNet V2 (+4.5), SUN RGB-D (+3.5), and S3DIS (+20.5) datasets. The code and models are available at https://github.com/samsunglabs/fcaf3d.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
3D Object Detection S3DIS FCAF3D mAP@0.5 45.9 # 5
mAP@0.25 66.7 # 5
3D Object Detection ScanNetV2 FCAF3D mAP@0.25 71.5 # 10
mAP@0.5 57.3 # 11
3D Object Detection SUN-RGBD val FCAF3D (Geo only) mAP@0.25 64.2 # 12
mAP@0.5 48.9 # 9

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