A Hybrid Method for Window Detection on High Resolution Facade Images
Titel Konferenzpublikation:
Intelligent Systems and Pattern Recognition
Untertitel Konferenzpublikation:
Second International Conference, ISPR 2022, Hammamet, Tunisia, March 24–26, 2022, Revised Selected Papers
Serie/Reihe:
Communications in Computer and Information Science
Band:
1589
Konferenztitel:
International Conference on Intelligent Systems and Pattern Recognition
Konferenztitel:
ISPR 2022
Tagungsort:
Hammamet, Tunisia
Jahr der Konferenz:
2022
Datum Beginn der Konferenz:
24.03.2022
Datum Ende der Konferenz:
26.03.2022
Jahr:
2025
Seitenbereich:
43-50
Sprache:
Englisch
Abstract:
In this paper we present a hybrid method for detecting windows on high-resolution rectified images of building facades combining deep learning with traditional geometric processing. As initial step we use a deep learning object detection method. As we observed that in most cases the detector outputs a larger object than the ground truth. We employ geometric processing based on image gradients to precisely delineate the window edges. For the evaluation of the algorithm we have created a high resolution dataset with more than 2000 annotated windows. The obtained results show that the detector’s bounding box differs from ground truth mostly by less than six pixels. The Intersection over Union IoU of the objects is 96.9%. Geometric processing improves IoU by 1.7% leading to an IoU score of 98.6%.
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In this paper we present a hybrid method for detecting windows on high-resolution rectified images of building facades combining deep learning with traditional geometric processing. As initial step we use a deep learning object detection method. As we observed that in most cases the detector outputs a larger object than the ground truth. We employ geometric processing based on image gradients to precisely delineate the window edges. For the evaluation of the algorithm we have created a high reso...
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