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Depth-guided Free-space Segmentation for a Mobile Robot
by
Hussain, Joey
, Makedon, Fillia
, Konstantopoulos, Stasinos
, Sevastopoulos, Christos
, Karkaletsis, Vangelis
in
Homogeneity
/ Indoor environments
/ Segmentation
2023
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Do you wish to request the book?
Depth-guided Free-space Segmentation for a Mobile Robot
by
Hussain, Joey
, Makedon, Fillia
, Konstantopoulos, Stasinos
, Sevastopoulos, Christos
, Karkaletsis, Vangelis
in
Homogeneity
/ Indoor environments
/ Segmentation
2023
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Paper
Depth-guided Free-space Segmentation for a Mobile Robot
2023
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Overview
Accurate indoor free-space segmentation is a challenging task due to the complexity and the dynamic nature that indoor environments exhibit. We propose an indoors free-space segmentation method that associates large depth values with navigable regions. Our method leverages an unsupervised masking technique that, using positive instances, generates segmentation labels based on textural homogeneity and depth uniformity. Moreover, we generate superpixels corresponding to areas of higher depth and align them with features extracted from a Dense Prediction Transformer (DPT). Using the estimated free-space masks and the DPT feature representation, a SegFormer model is fine-tuned on our custom-collected indoor dataset. Our experiments demonstrate sufficient performance in intricate scenarios characterized by cluttered obstacles and challenging identification of free space.
Publisher
Cornell University Library, arXiv.org
Subject
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