资源论文Efficient Hierarchical Graph-Based Segmentation of RGBD Videos

Efficient Hierarchical Graph-Based Segmentation of RGBD Videos

2019-12-16 | |  61 |   37 |   0

Abstract

We present an effificient and scalable algorithm for segmenting 3D RGBD point clouds by combining depth, color, and temporal information using a multistage, hierarchical graph-based approach. Our algorithm processes a moving window over several point clouds to group similar regions over a graph, resulting in an initial over-segmentation. These regions are then merged to yield a dendrogram using agglomerative clustering via a minimum spanning tree algorithm. Bipartite graph matching at a given level of the hierarchical tree yields the fifinal segmentation of the point clouds by maintaining region identities over arbitrarily long periods of time. We show that a multistage segmentation with depth then color yields better results than a linear combination of depth and color. Due to its incremental processing, our algorithm can process videos of any length and in a streaming pipeline. The algorithms ability to produce robust, effificient segmentation is demonstrated with numerous experimental results on challenging sequences from our own as well as public RGBD data sets.

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