jagomart
digital resources
picture1_Gestalt Therapy Pdf 70258 | Lecture 17 Em


 169x       Filetype PPTX       File size 2.42 MB       Source: filebox.ece.vt.edu


File: Gestalt Therapy Pdf 70258 | Lecture 17 Em
  proposal due oct 27  thursday   tips for final  ...

icon picture PPTX Filetype Power Point PPTX | Posted on 30 Aug 2022 | 3 years ago
Partial capture of text on file.
   Administrative stuffs
   •Final project 
     • proposal due Oct 27 (Thursday)
   •Tips for final project
     • Set up several milestones
     • Think about how you are going to evaluate
     • Demo is highly encouraged
   •HW 4 out tomorrow
    Review: Image Segmentation
   • Gestalt cues and principles of organization
   • Uses of segmentation
    –Efficiency
    –Provide feature supports
    –Propose object regions
    –Want the segmented object
   • Mean-shift segmentation
    –Good general-purpose segmentation method 
    –Generally useful clustering, tracking technique
   • Watershed segmentation
    –Good for hierarchical segmentation
    –Use in combination with boundary prediction
      HW 4: SLIC   (Achanta et al. PAMI 2012)
        http://infoscience.epfl.ch/record/177415/files/Superpixel_PAMI2011-2.pdf
    1. Initialize cluster centers on pixel 
        grid in steps S
       - Features: Lab color, x-y position
    2. Move centers to position in 3x3 
        window with smallest gradient
    3. Compare each pixel to cluster 
        center within 2S pixel distance 
        and assign to nearest
    4. Recompute cluster centers as        + Fast 0.36s for 320x240
                                           + Regular superpixels
        mean color/position of pixels      + Superpixels fit boundaries
        belonging to each cluster          -  May miss thin objects
                                           -  Large number of superpixels
    5. Stop when residual error is small
    Today’s Class
    •Examples of Missing Data Problems
     • Detecting outliers (HW 4, problem 2)
     • Latent topic models 
     • Segmentation (HW 4, problem 3)
    •Background
     • Maximum Likelihood Estimation
     • Probabilistic Inference
    •Dealing with “Hidden” Variables
     • EM algorithm, Mixture of Gaussians
     • Hard EM
       Missing Data Problems: 
       Outliers
       You want to train an algorithm to predict whether a photograph is 
       attractive.  You collect annotations from Mechanical Turk.  Some 
       annotators try to give accurate ratings, but others answer 
       randomly.
       Challenge: Determine which people to trust and the average rating 
       by accurate annotators.
                                                                Annotator 
                                                                  Ratings
                                                                   10
                                                                    8
                                                                    9
                                                                    2
                                                                    8
                                                                    Photo: Jam343 (Flickr)
The words contained in this file might help you see if this file matches what you are looking for:

...Administrative stuffs final project proposal due oct thursday tips for set up several milestones think about how you are going to evaluate demo is highly encouraged hw out tomorrow review image segmentation gestalt cues and principles of organization uses efficiency provide feature supports propose object regions want the segmented mean shift good general purpose method generally useful clustering tracking technique watershed hierarchical use in combination with boundary prediction slic achanta et al pami http infoscience epfl ch record files superpixel pdf initialize cluster centers on pixel grid steps s features lab color x y position move window smallest gradient compare each center within distance assign nearest recompute as fast regular superpixels pixels fit boundaries belonging may miss thin objects large number stop when residual error small today class examples missing data problems detecting outliers problem latent topic models background maximum likelihood estimation probabi...

no reviews yet
Please Login to review.