Auto-Context and Its Applications

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=cC9J-oTBayI



Duration: 1:14:22
424 views
1


The notion of using context information for solving the high-level vision and medical imaging problems has been increasingly realized in the field. The current literature using Markov Random Fields (MRFs) and Conditional Random Fields (CRFs) often involves specific algorithm design, in which the modeling and computing stages are studied in isolation. In this talk, I will present an auto-context algorithm. Auto-context learns an integrated low-level and context model, and is very general and easy to implement. It selects and fuses a large number of low-level appearance features, with implicit context and shape information, through discriminative models. Under nearly an identical parameter setting in training, we apply the algorithm on three challenging vision applications: object segmentation, human body configuration, and scene region labeling. Moreover, context also plays a very important role in medical/brain images where the anatomical structures are mostly positioned and constrained. In the second part of my talk, I will present various new learning approaches for modeling, shape matching, and object detection.




Other Videos By Microsoft Research


2016-09-06eScience: Data Modeling and Preservation - A Data Model for Environmental Observations
2016-09-06Knowledge Discovery Using Data Mined from Nuclear Magnetic Resonance Spectral Images
2016-09-06Markov Logic: Theory, Algorithms and Applications
2016-09-06Data Modeling and Preservation - A Web-Based Resource Model for eScience: Object Reuse & Exchange
2016-09-06Combinatorial Betting
2016-09-06Compact Proofs of Retrievability
2016-09-06What can be done to further social justice with a camera and pen?
2016-09-06The Race for Perfect: Inside the Quest to Design the Ultimate Portable Computer
2016-09-06Arithmetic Intersection and a conjecture of Lauter
2016-09-06Stuck in the Shallow End: Race, Education and Computing
2016-09-06Auto-Context and Its Applications
2016-09-06HASS: A Scheduler for Heterogeneous Multicore Systems
2016-09-06Power is not everything: two frameworks to overcome limitations of power domain modeling
2016-09-06Secure Code Generation for Web Applications
2016-09-06Half a Century of Public Software Institutions: Open Source as a Solution to Hold-Up Problem
2016-09-06PADS: A Language and System for Automatic Tool Generation from Ad Hoc Data Sources
2016-09-06Honest Signals: How They Shape Our World
2016-09-06Heed: A Framework for Situation Aware Monitoring
2016-09-06Behind the Code with Richard Ward
2016-09-06Economic Gangsters: Corruption, Violence and the Poverty of Nations
2016-09-06Compiling the Web - Building a Just-in-Time Compiler for JavaScript



Tags:
microsoft research