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6D Pose Estimation using an Improved Method based on Point Pair Features

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The Point Pair Feature (Drost et al. 2010) has been one of the most successful 6D pose estimation method among model-based approaches as an efficient, integrated and compromise alternative to the traditional local and global pipelines. During the last years, several variations of the algorithm have been proposed. Among these extensions, the solution introduced by Hinterstoisser et al. (2016) is a major contribution. This work presents a variation of this PPF method applied to the SIXD Challenge datasets presented at the 3rd International Workshop on Recovering 6D Object Pose held at the ICCV 2017. We report an average recall of 0.77 for all datasets and overall recall of 0.82, 0.67, 0.85, 0.37, 0.97 and 0.96 for hinterstoisser, tless, tudlight, rutgers, tejani and doumanoglou datasets, respectively.

Joel Vidal, Chyi-Yeu Lin, Robert Mart\'i• 2018

Related benchmarks

TaskDatasetResultRank
6D Object Pose EstimationT-LESS Primesense SIXD BOP 2018 (test)
Object Recall (errvsd < 0.3)0.6651
14
6D Pose EstimationLineMOD
Overall Speed0.2
12
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