Please use this identifier to cite or link to this item: https://hdl.handle.net/2440/138055
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Type: Journal article
Title: Dynamic Convolution for 3D Point Cloud Instance Segmentation
Author: He, T.
Shen, C.
Hengel, A.V.D.
Citation: IEEE Transactions on Pattern Analysis and Machine Intelligence, 2022; 45(5):5697-5711
Publisher: Institute of Electrical and Electronics Engineers (IEEE)
Issue Date: 2022
ISSN: 0162-8828
2160-9292
Statement of
Responsibility: 
Tong He, Chunhua Shen, and Anton van den Hengel
Abstract: In this paper, we come up with a simple yet effective approach for instance segmentation on 3D point cloud with strong robustness. Previous top-performing methods for this task adopt a bottom-up strategy, which often involves various inefficient operations or complex pipelines, such as grouping over-segmented components, introducing heuristic post-processing steps, and designing complex loss functions. As a result, the inevitable variations of the instances sizes make it vulnerable and sensitive to the values of pre-defined hyper-parameters. To this end, we instead propose a novel pipeline that applies dynamic convolution to generate instance-aware parameters in response to the characteristics of the instances. The representation capability of the parameters is greatly improved by gathering homogeneous points that have identical semantic categories and close votes for the geometric centroids. Instances are then decoded via several simple convolution layers, where the parameters are generated depending on the input. In addition, to introduce a large context and maintain limited computational overheads, a light-weight transformer is built upon the bottleneck layer to capture the long-range dependencies. With the only post-processing step, non-maximum suppression (NMS), we demonstrate a simpler and more robust approach that achieves promising performance on various datasets: ScanNetV2, S3DIS, and PartNet. The consistent improvements on both voxel- and point-based architectures imply the effectiveness of the proposed method. Code is available at: https://git.io/DyCo3D.
Keywords: Point cloud; instance segmentation; dynamic convolution; deep learning
Rights: © 2022 IEEE
DOI: 10.1109/tpami.2022.3216926
Published version: http://dx.doi.org/10.1109/tpami.2022.3216926
Appears in Collections:Aurora harvest 4
Australian Institute for Machine Learning publications
Computer Science publications

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