TY - JOUR U1 - Zeitschriftenartikel, wissenschaftlich - begutachtet (reviewed) A1 - Jasch, Manuel A1 - Weber, Thomas A1 - Rätsch, Matthias T1 - Fast and robust RGB-D scene labeling for autonomous driving JF - Journal of Computers N2 - For autonomously driving cars and intelligent vehicles it is crucial to understand the scene context including objects in the surrounding. A fundamental technique accomplishing this is scene labeling. That is, assigning a semantic class to each pixel in a scene image. This task is commonly tackled quite well by fully convolutional neural networks (FCN). Crucial factors are a small model size and a low execution time. This work presents the first method that exploits depth cues together with confidence estimates in a CNN. To this end, novel experimentally grounded network architecture is proposed to perform robust scene labeling that does not require costly preprocessing like CRFs or LSTMs as commonly used in related work. The effectiveness of this approach is demonstrated in an extensive evaluation on a challenging real-world dataset. The new architecture is highly optimized for high accuracy and low execution time. KW - CNN architecture KW - deep convolutional neural networks KW - depth information KW - semantic pixel-wise segmentation Y1 - 2018 U6 - https://nbn-resolving.org/urn:nbn:de:bsz:rt2-opus4-17016 UN - https://nbn-resolving.org/urn:nbn:de:bsz:rt2-opus4-17016 UR - http://www.jcomputers.us/list-196-1.html SN - 1796-203X SS - 1796-203X VL - 13 IS - 4 SP - 393 EP - 400 S1 - 8 PB - International Academy Publishing CY - San Bernardino, Ca. ER -