Relative Volume Constraints for 3D Image Editing Computer Vision Group TU Munich Eno Töppe, Claudia Nieuwenhuis, Daniel Cremers May 25th, 2012.

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Presentation transcript:

Relative Volume Constraints for 3D Image Editing Computer Vision Group TU Munich Eno Töppe, Claudia Nieuwenhuis, Daniel Cremers May 25th, 2012

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 2 Single View Reconstruction Single Image 3D Representation New Lighting and Material

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 3 Workflow Graphcut-based segmentation 1 1 Boykov, Jolly: Interactive graph cuts for optimal boundary region segmentation of objects in n-d images. ICCV ‘01 input imagesegmentationreconstruction final result user strokes interactive adaption of volume / smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 4 Results

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 5 Results

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 6 Sharp Edges Minimal Surface with Fixed Volume The Same with Local Smoothness Relaxation

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 7 Relative Depth Profiles Reconstruction with Relative Depth Depth Profile indicating Relative Depth

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 8 Relative Depth Profiles Reconstruction with Fixed Volume Input Image

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 9 Relative Depth Profiles Reconstruction with Relative Depth Profile Depth Profile indicating Relative Depth

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 10 Subvolume Ratios Reconstruction with Relative Depth Profile and Subvolume Ratio User Drawn Area Indicating Projected Subvolume

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 11 Results Input Image Reconstruction with Constant Volume + Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 12 Results Reconstructions with New Constraints Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 13 Results Input Image Reconstruction with Constant Volume + Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 14 Results Reconstructions with New Constraints

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 15 Results Input Image Reconstruction with Constant Volume + Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 16 Results Reconstructions with New Constraints Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 17 Results Input Image

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 18 Results Reconstructions with New Constraints Local Smoothness (User Input)

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 19 Results Input Image

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 20 Results Reconstructions with New Constraints Local Smoothness (User Input)

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 21 Results Input Image Reconstruction with Constant Volume + Local Smoothness

Töppe, Nieuwenhuis, Cremers: Relative Volume Constraints for 3D Image Editing 22 Results Reconstructions with New Constraints