Submission: Drost-CVPR10-3D-Edges/TUD-L

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Submission name
Submission time (UTC) Aug. 5, 2019, 8:20 a.m.
User Berti
Task 6D localization of seen objects
Dataset TUD-L
Training model type Default
Training image type None
Description
Evaluation scores
AR:0.852
AR_MSPD:0.872
AR_MSSD:0.875
AR_VSD:0.809
average_time_per_image:2.448

Method: Drost-CVPR10-3D-Edges

User Berti
Publication Drost et al., Model globally, match locally: Efficient and robust 3D object recognition, CVPR 2010.
Implementation
Training image modalities None
Test image modalities D
Description

An implementation of the paper, including ICP for post-processing and using 3D surface and 3D edges for voting.

The parameters are set to a slower, but more accurate mode (relative sampling distance of 0.03 for model creation and matching).

No images are used. CPU only, no GPU is used.

Implementation: HALCON 19.05 progress.

Computer specifications Max. 12 Threads on intel Xeon CPU E5-2690 v4 @ 2.60GHz, 2601 Mhz