Wrap Up. We talked about Filters Edges Corners Interest Points Descriptors Image Stitching Stereo SFM.

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Presentation transcript:

Wrap Up

We talked about Filters Edges Corners Interest Points Descriptors Image Stitching Stereo SFM

We talked about Reconstruction Flow Face Detection Face Recognition Pedestrian Detection Part-Based Recognition …

What else? Several other interesting stuff that we wanted to talk about them

Person Sky Tree Car Image Segmentation

Scene Parsing

Context

drive- way sky house ? grass Context-aware visual discovery grass sky truck house ? drive- way grass sky house drive- way fence ? ? ?? 10 Context in supervised recognition: [Torralba 2003], [Hoiem et al. 2006], [He et al. 2004], [Shotton et al. 2006], [Heitz & Koller 2008], [Rabinovich et al. 2007], [Galleguillos et al. 2008], [Tu 2008], [Parikh et al. 2008], [Gould et al. 2009], [Malisiewicz & Efros 2009], [Lazebnik 2009]

Attributes Vehicle Wheel Animal Leg Head Four-legged Mammal Can run Can Jump Is Herbivorous Facing right Moves on road Facing right

3D Recognition

RGB-D

Pose Estimation

Tracking

Action Recognition

Egocentric Vision