2017
DOI: 10.1109/lra.2016.2532927
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Combining Semantic and Geometric Features for Object Class Segmentation of Indoor Scenes

Abstract: Abstract-Scene understanding is a necessary prerequisite for robots acting autonomously in complex environments. Low-cost RGB-D cameras such as Microsoft Kinect enabled new methods for analyzing indoor scenes and are now ubiquitously used in indoor robotics. We investigate strategies for efficient pixelwise object class labeling of indoor scenes that combine both pretrained semantic features transferred from a large color image dataset and geometric features, computed relative to the room structures, including… Show more

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Cited by 44 publications
(31 citation statements)
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“…We use the semantic segmentation method of Husain et al [4], which is a feature learning approach similar to Eigen and Fergus [17] and Long et al [18]. Other approaches for semantic segmentation introduce hand-crafted features in their model such as gradient, colour, local binary pattern, depth gradient, spin, surface normals by Wu et al [19] and pixel value comparison and oriented gradients by Hermans et al [20].…”
Section: Related Workmentioning
confidence: 99%
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“…We use the semantic segmentation method of Husain et al [4], which is a feature learning approach similar to Eigen and Fergus [17] and Long et al [18]. Other approaches for semantic segmentation introduce hand-crafted features in their model such as gradient, colour, local binary pattern, depth gradient, spin, surface normals by Wu et al [19] and pixel value comparison and oriented gradients by Hermans et al [20].…”
Section: Related Workmentioning
confidence: 99%
“…Here, saliency is used to locate the objects, while colour and depth segmentations are used to define their precise boundaries. For semantic segmentation, we chose the deep convolutional neural network approach of Husain et al [4], which produces state-of-theart segmentation results. The semantic segmentation induces a partitioning of the superpixel set into semantic categories, to which the object discovery method can be applied separately.…”
Section: Object Candidate Generationmentioning
confidence: 99%
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