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Andrey Filippov authored
Top-level scene iterator re-generating per-scene 3-angle poses against the persistent virtual-center reference, RT-style: ascending time order, zero-order prediction seeding (fit anchored to the center, prediction only warm-starts the LMA), single pass on the final combo DSI (no refinement pass - it only existed because disparity arrived after initial orientations offline). Measurement engine = proven Interscene.adjustPairsLMAInterscene (reference GPU data set once); phase B will swap it for the lean TD-average x virtual-center path with GPU argmax+eigen kernels, keeping this iterator + CSV as the oracle. - new cuas/rt/CuasPoseRT.testPoseSequence(): reference prep (strength> curt_pose_str tile selection, setReferenceGPU with center CLT), stored-pose seed/truth from center ErsCorrection scenes_poses, per-scene fit with 3-angle param_select (XYZ locked), ERS dt from pose finite differences (disable_ers), MB off, coast-on-failure; writes -POSE-RT-TEST.csv + fitted-vs-stored summary - params curt_pose_test (bool) + curt_pose_str (1.0) - 6 plumbing sites - OpticalFlow curt_en branch: curt_pose_test runs INSTEAD of detection Build: mvn compile clean. Runtime validation pending (Eclipse/Eyesis run on sequence 1773135476_186641, truth = re-adjusted stored poses). Co-Authored-By:Claude Fable 5 <noreply@anthropic.com>
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