Carnegie Mellon University
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Light Sheet Depth Imaging

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thesis
posted on 2019-07-03, 20:17 authored by Joseph BartelsJoseph Bartels
As robots are developed for large-scale applications in autonomous driving, package delivery, and agriculture, there is a growing need for affordable and reliable depth sensing. Robots use active illumination sensors like scanning LIDAR and depth cameras to perceive their worlds. Scanning LIDAR is prevalent because it offers long-range, robust sensing, but it is expensive and only captures sparse point
measurements. Consumer depth cameras, on the other hand, are inexpensive and produce high-rate, dense depth measurements but fail outdoors in bright light. This thesis developed active illumination depth cameras and sensing methodologies that combine the robustness of scanning LIDAR with the speed, sampling density, and economy of consumer depth cameras. Rather than sample the entire
scene at once like consumer depth cameras or with points like LIDAR, the key approach uses sheets of projected light and imaging to rapidly sample the scene along
a single line at a time. Using this approach, four contributions have been made. The first is a contribution
to the development of a light sheet depth imaging device that applies the concept of epipolar imaging to continuous-wave time-of-flight cameras. The resulting depth camera can see up to 15 meters in bright sunlight and is robust to global illumination and motion. The next contribution developed a second generation of this camera that demonstrated sensing ranges up to 50 meters. The third contribution uses the projected sheets of light and imaging to triangulate and sense along a 3D line. By sweeping this line through the volume with galvomirrors, a programmable light curtain
is formed that detects objects along its surface at five frames per second. Finally, rapid imaging of programmable light curtains at 60 frames per second was enabled
with the custom development of a device that uses the rolling shutter of a camera to steer the imaging plane instead of a galvomirror. The speed and selectivity provided
by this device enabled applications in agile depth sensing where scenes are adaptively sampled based on detected regions of interest. The research developed in this thesis contributes methods and hardware for high resolution
depth imaging that works in challenging conditions, provides methods for computationally inexpensive agile depth sensing, and has the economics that could enable next generation and wide-scale applications in mobile robotics, agriculture, and industrial manufacturing.

History

Date

2019-05-13

Degree Type

  • Dissertation

Department

  • Robotics Institute

Degree Name

  • Doctor of Philosophy (PhD)

Advisor(s)

William “Red” Whittaker Srinivasa Narasimhan

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