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Slanted Stixels: Representing San Francisco's Steepest Streets

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arxiv 1707.05397 v1 pith:EMQTHVHZ submitted 2017-07-17 cs.CV

Slanted Stixels: Representing San Francisco's Steepest Streets

classification cs.CV
keywords novelaccuracyapproachgeometricscenesemanticstixelsdatasets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work we present a novel compact scene representation based on Stixels that infers geometric and semantic information. Our approach overcomes the previous rather restrictive geometric assumptions for Stixels by introducing a novel depth model to account for non-flat roads and slanted objects. Both semantic and depth cues are used jointly to infer the scene representation in a sound global energy minimization formulation. Furthermore, a novel approximation scheme is introduced that uses an extremely efficient over-segmentation. In doing so, the computational complexity of the Stixel inference algorithm is reduced significantly, achieving real-time computation capabilities with only a slight drop in accuracy. We evaluate the proposed approach in terms of semantic and geometric accuracy as well as run-time on four publicly available benchmark datasets. Our approach maintains accuracy on flat road scene datasets while improving substantially on a novel non-flat road dataset.

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