21,757 research outputs found
Towards Safe Autonomous Driving: Capture Uncertainty in the Deep Neural Network For Lidar 3D Vehicle Detection
To assure that an autonomous car is driving safely on public roads, its
object detection module should not only work correctly, but show its prediction
confidence as well. Previous object detectors driven by deep learning do not
explicitly model uncertainties in the neural network. We tackle with this
problem by presenting practical methods to capture uncertainties in a 3D
vehicle detector for Lidar point clouds. The proposed probabilistic detector
represents reliable epistemic uncertainty and aleatoric uncertainty in
classification and localization tasks. Experimental results show that the
epistemic uncertainty is related to the detection accuracy, whereas the
aleatoric uncertainty is influenced by vehicle distance and occlusion. The
results also show that we can improve the detection performance by 1%-5% by
modeling the aleatoric uncertainty.Comment: Accepted to present in the 21st IEEE International Conference on
Intelligent Transportation Systems (ITSC 2018
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Volume Modeling for Rapid Prototyping
The expanding workspace of Rapid Prototyping will draw on the new developments
in geometric modeling. Volume modeling has substantial advantages over other modeling
schemes to meet the emerging requirements of Rapid Prototyping technology. It provides us with
a new approach to design complex geometry and topology. The integration of the volume
modeling and Rapid Prototyping technology will help us to fully exploit RP's ability to fabricate
objects with complex structures. This paper addresses our research and practice in a volume
modeling system toward Rapid Prototyping. Novel techniques in volumetric data manipulation,
NURBS volume models and triangular facet generation over solid models are presented.
Computer models designed by this system and their corresponding DTM products are also
shown atthe end of this paper.Mechanical Engineerin
Transverse emission of isospin ratios as a probe of high-density symmetry energy in isotopic nuclear reactions
Transverse emission of preequilibrium nucleons, light clusters (complex
particles) and charged pions from the isotopic Sn+Sn
reactions at a beam energy of 400\emph{A} MeV, to extract the high-density
behavior of nuclear symmetry energy, are investigated within an isospin and
momentum dependent transport model. Specifically, the double ratios of
neutron/proton, triton/helium-3 and in the squeeze-out domain
are analyzed systematically, which have the advantage of reducing the influence
of the Coulomb force and less systematic errors. It is found that the
transverse momentum distribution of isospin ratios strongly depend on the
stiffness of nuclear symmetry energy, which would be a nice observable to
extract the high-density symmetry energy. The collision centrality and the mass
splitting of neutron and proton in nuclear medium play a significant role on
the distribution structure of the ratios, but does not change the influence of
symmetry energy on the spectrum.Comment: 5 figures, 13 page
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