LOCUS Demo Stefan Zickler. Two “different” classes Class “Car Side Views” Class “Car Rears”

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Presentation transcript:

LOCUS Demo Stefan Zickler

Two “different” classes Class “Car Side Views” Class “Car Rears”

Morphing within a class  We can interpolate between model instance’s parameters (gradual change of the deformation field and pixel colors)  This gives us a nice morphing effect.

Morphing within Class “Car Sides”

Morphing within Class “Car Rears”

Morphing within Class “Horse Sides”

LOCUS applied to a video Mask Edge Map Every video frame is treated as a separate class instance.

Using motion and tracking cues  So far we have derived models by treating each image as an independent instance of our model.  When segmenting videos, we can improve results by making use of the fact that a video is a continuous model change.

Using motion and tracking cues N. Jojic, J. Winn and L. Zitnick Escaping Local Minima through Hierarchical Model Selection: Automatic Object Discovery, Segmentation, and Tracking in Video Proc. IEEE Computer Vision and Pattern Recognition (CVPR), New York, To appear.