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Published byGaven Heslop Modified over 10 years ago
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Learning Specific-Class Segmentation from Diverse Data M. Pawan Kumar, Haitherm Turki, Dan Preston and Daphne Koller at ICCV 2011 VGG reading group, 29 Nov 2011, presented by Varun Gulshan
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Semantic image segmentation
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Main idea High level: Getting fully labelled data for training is expensive, use other easily available ‘diverse’ data for learning (bounding boxes, classification labels for image). Tags: Car, people Person bounding box
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Implementing the idea The bounding box/image classification data is incomplete for segmentation, fill in the missing information using latent variables. Setup the training cost function using latent variables. Use their self- paced learning algorithm for Latent-SVM’s [NIPS2010] to optimise the training cost function. While inferring latent variables, make sure latent variable estimation is consistent with the weak annotation. Setting up the inference problems to ensure this condition.
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Energy function without latent variables Notation: Image Parameters to be trained Joint feature vector (essentially the terms of a CRF)
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Structured output training Ground truth labels Loss function
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Introducing latent variables
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But we don’t know what h k is (its latent), so maximise it out.
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Introducing latent variables
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Self-paced optimisation
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Indicator variable to switch off the harder cases.
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Second idea: Latent variable estimation The algorithm involves estimating annotation consistent latent variables in the following equation: More precisely
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Move to white-board Me You Beware of Equations
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