Enhanced Object Detection in Floor-plan through Super Resolution
Building Information Modelling (BIM) software use scalable vector formats to enable flexible designing of floor plans in the industry. Floor plans in the architectural domain can come from many sources that may or may not be in scalable vector format. The conversion of floor plan images to fully ann...
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Zusammenfassung: | Building Information Modelling (BIM) software use scalable vector formats to
enable flexible designing of floor plans in the industry. Floor plans in the
architectural domain can come from many sources that may or may not be in
scalable vector format. The conversion of floor plan images to fully annotated
vector images is a process that can now be realized by computer vision. Novel
datasets in this field have been used to train Convolutional Neural Network
(CNN) architectures for object detection. Image enhancement through
Super-Resolution (SR) is also an established CNN based network in computer
vision that is used for converting low resolution images to high resolution
ones. This work focuses on creating a multi-component module that stacks a SR
model on a floor plan object detection model. The proposed stacked model shows
greater performance than the corresponding vanilla object detection model. For
the best case, the the inclusion of SR showed an improvement of 39.47% in
object detection over the vanilla network. Data and code are made publicly
available at https://github.com/rbg-research/Floor-Plan-Detection. |
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DOI: | 10.48550/arxiv.2112.09844 |