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- W4213229165 endingPage "965" @default.
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- W4213229165 abstract "Panoptic segmentation combines instance and semantic predictions, allowing the detection of things and stuff simultaneously. Effectively approaching panoptic segmentation in remotely sensed data can be auspicious in many challenging problems since it allows continuous mapping and specific target counting. Several difficulties have prevented the growth of this task in remote sensing: (a) most algorithms are designed for traditional images, (b) image labelling must encompass things and stuff classes, and (c) the annotation format is complex. Thus, aiming to solve and increase the operability of panoptic segmentation in remote sensing, this study has five objectives: (1) create a novel data preparation pipeline for panoptic segmentation, (2) propose an annotation conversion software to generate panoptic annotations; (3) propose a novel dataset on urban areas, (4) modify the Detectron2 for the task, and (5) evaluate difficulties of this task in the urban setting. We used an aerial image with a 0,24-meter spatial resolution considering 14 classes. Our pipeline considers three image inputs, and the proposed software uses point shapefiles for creating samples in the COCO format. Our study generated 3,400 samples with 512x512 pixel dimensions. We used the Panoptic-FPN with two backbones (ResNet-50 and ResNet-101), and the model evaluation considered semantic instance and panoptic metrics. We obtained 93.9, 47.7, and 64.9 for the mean IoU, box AP, and PQ. Our study presents the first effective pipeline for panoptic segmentation and an extensive database for other researchers to use and deal with other data or related problems requiring a thorough scene understanding." @default.
- W4213229165 created "2022-02-24" @default.
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- W4213229165 date "2022-02-16" @default.
- W4213229165 modified "2023-10-16" @default.
- W4213229165 title "Panoptic Segmentation Meets Remote Sensing" @default.
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- W4213229165 doi "https://doi.org/10.3390/rs14040965" @default.
- W4213229165 hasPublicationYear "2022" @default.
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