Jingyi XiangHolly DinkelHarry ZhaoNaixiang GaoBrian ColtinTrey SmithTimothy Bretl
The TrackDLO algorithm estimates the shape of a Deformable Linear Object (DLO) under occlusion from a sequence of RGB-D images. TrackDLO is vision-only and runs in real-time. It requires no external state information from physics modeling, simulation, visual markers, or contact as input. The algorithm improves on previous approaches by addressing three common scenarios which cause tracking failure: tip occlusion, mid-section occlusion, and self-occlusion. This is achieved through the application of Motion Coherence Theory to impute the spatial velocity of occluded nodes, the use of the topological geodesic distance to track self-occluding DLOs, and the introduction of a non-Gaussian kernel that only penalizes lower-order spatial displacement derivatives to reflect DLO physics. Improved real-time DLO tracking under mid-section occlusion, tip occlusion,and self-occlusion is demonstrated experimentally. The source code and demonstration data are publicly released.
Dilip K. PrasadMichael S. Brown
Jiangtao MaJianhua LiuXiaoyu DingNaijing Lv
René AlquézarNicolás AmézquitaFrancesc Serratosa
Candemir TokluA. Murat TekalpA. Tanju ErdemM. Ibrahim Sezan
Alireza RastegarpanahRhys HowardRustam Stolkin