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Papers/Aerial Imagery Pixel-level Segmentation

Aerial Imagery Pixel-level Segmentation

Michael R. Heffels, Joaquin Vanschoren

2020-12-03Data AugmentationSegmentationSemantic Segmentation
PaperPDFCode(official)

Abstract

Aerial imagery can be used for important work on a global scale. Nevertheless, the analysis of this data using neural network architectures lags behind the current state-of-the-art on popular datasets such as PASCAL VOC, CityScapes and Camvid. In this paper we bridge the performance-gap between these popular datasets and aerial imagery data. Little work is done on aerial imagery with state-of-the-art neural network architectures in a multi-class setting. Our experiments concerning data augmentation, normalisation, image size and loss functions give insight into a high performance setup for aerial imagery segmentation datasets. Our work, using the state-of-the-art DeepLabv3+ Xception65 architecture, achieves a mean IOU of 70% on the DroneDeploy validation set. With this result, we clearly outperform the current publicly available state-of-the-art validation set mIOU (65%) performance with 5%. Furthermore, to our knowledge, there is no mIOU benchmark for the test set. Hence, we also propose a new benchmark on the DroneDeploy test set using the best performing DeepLabv3+ Xception65 architecture, with a mIOU score of 52.5%.

Results

TaskDatasetMetricValueModel
Semantic SegmentationDroneDeployMean IoU (test)52.5DLv3+ (Xception65)
Semantic SegmentationDroneDeployMean IoU (val)69.9DLv3+ (Xception65)
10-shot image generationDroneDeployMean IoU (test)52.5DLv3+ (Xception65)
10-shot image generationDroneDeployMean IoU (val)69.9DLv3+ (Xception65)

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