Research Intern - Bayesian Methods in Geometric Computer Vision

Microsoft Microsoft · Big Tech · Redmond, WA +1 · Applied Sciences

Research Intern position focusing on developing Bayesian methods for geometric computer vision, specifically for 2D and 3D point matching. Requires strong background in geometric computer vision, Bayesian statistical theory, and approximation algorithms. The role involves implementing algorithms and benchmarking results, with the goal of producing a high-quality technical report and potential publication.

What you'd actually do

  1. Develop a basis for the application of Bayesian methods in geometric computer vision, starting with the fundamental problem of 2D and 3D point matching.
  2. Efficient implementation of approximation algorithms in the context of one or more problems in geometric computer vision, and the benchmarking of the results against competing methods.
  3. Produce a high-quality technical report, which, if the work is successful, will be submitted to an appropriate publication venue.

Skills

Required

  • PhD program in Mathematics, Statistics, Computer Science or a related STEM field
  • Geometric computer vision
  • Probability and statistics, covering Bayesian theory
  • Approximation algorithms and computational complexity classes
  • Efficient implementation of approximation algorithms
  • Python or C++

Nice to have

  • Proficiency in the implementation of efficient algorithms, demonstrated by published algorithms or samples of open-source code
  • Demonstrated ability to understand algorithm benchmarks and evaluation
  • Experience with writing technical reports and scientific publications
  • Willingness to learn new topics without being daunted by a steep learning curve

What the JD emphasized

  • research-level knowledge of two of the three following topics
  • Candidates should have research-level knowledge
  • ability to produce efficient code in Python or C++ is a must