MZ

FotoFirst NameLast NamePosition
Klaus Hildebrandt Applies Geometry
Matthias Hullin Computational Transient Imaging
Ivo Ihrke Generalized Image Acquisition and Analysis
Andreas Karrenbauer Discrete Optimization
Michael Kerber Topological and Geometric Computing
Haricharan Lakshman Immersive Video
Hendrik Lensch General Appearance Acquisition
Hendrik Lensch General Appearance Acquisition
Yangyan Li Semantic Reconstruction from Point Cloud
Markus Magnor Graphics - Optics - Vision

Researcher


Dr. Michael Zollhöfer


Visual Computing, Deep Learning and Optimization

Name of Research Group: Visual Computing, Deep Learning and Optimization
Homepage Research Group: web.stanford.edu/~zollhoef
Personal Homepage: zollhoefer.com
Mentor Saarbrücken: Hans-Peter Seidel
Mentor Stanford: Pat Hanrahan
Research Mission: The primary focus of my research is to teach computers to reconstruct and analyze our world at frame rate based on visual input. The extracted knowledge is the foundation for a broad range of applications not only in visual effects, computer animation, autonomous driving and man-machine interaction, but is also essential in other related fields such as medicine and biomechanics. Especially, with the increasing popularity of virtual, augmented and mixed reality, there comes a rising demand for real-time low latency solutions to the underlying core problems.    My research tackles these challenges based on novel mathematical models and algorithms that enable computers to first reconstruct and subsequently analyze our world. The main focus is on fast and robust algorithms that approach the underlying reconstruction and machine learning problems for static as well as dynamic scenes. To this end, I develop key technology to invert the image formation models of computer graphics based on data-parallel optimization and state-of-the-art deep learning techniques.    The extraction of 3D and 4D information from visual data is highly challenging and under-constraint, since image formation convolves multiple physical dimensions into flat color measurements. 3D and 4D reconstruction at real-time rates poses additional challenges, since it involves the solution of unique challenges at the intersection of multiple important research fields, namely computer graphics, computer vision, machine learning, optimization, and high-performance computing. However, a solution to these problems provides strong cues for the extraction of higher-order semantic knowledge. It is incredibly important to solve the underlying core problems, since this will have high impact in multiple important research fields and provide key technological insights that have the potential to transform the visual computing industry. In summer 2019 Michael Zollhöfer joined Facebook.

Researcher

Name of Researcher
Mykhaylo Andriluka
Homepage of Research Group
First Name
Mykhaylo
Last Name
Andriluka
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wp.mpi-inf.mpg.de/mpc-vcc/files/2014/02/IMG_1260-e1391439603848.jpg
Phone
Position
People Detection and Tracking
Categories
Former Groups
Research Mission
People detection, tracking, pose estimation and activity recognition in images and video are important and challenging tasks with many practical applications. The goal of my research is to develop solutions for these tasks that are applicable in challenging real-world conditions such as onboard footage from moving vehicles, YouTube videos or images on the web. Current computer vision systems rely heavily on machine learning techniques in order to learn how to perform visual recognition tasks from training examples. However, existing methods involve manual design of the whole recognition pipeline that involves defining the key components of the model, its structure, and encoding prior knowledge by choosing appropriate prior distributions, independence assumptions and manually set parameters. Building complex trainable computer vision systems without requirement for complex manual design is another goal that I pursue with my work. On this route I am currently focusing on methods that allow to leverage large-scale datasets and can be trained end-to-end. I am also actively exploring new ways to acquire large scale datasets by means of computer graphics, crowd-sourcing and semi-supervised learning.
mission_rtf
Name of Research Group
People Detection and Tracking

Personal Info

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