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Papers/Multi-Temporal Land Cover Classification with Sequential R...

Multi-Temporal Land Cover Classification with Sequential Recurrent Encoders

Marc Rußwurm, Marco Körner

2018-02-06International Journal of Geo-Information 2018 3Speech RecognitionMachine Translationspeech-recognitionLand Cover ClassificationGeneral ClassificationClassificationUNET Segmentation
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Abstract

Earth observation (EO) sensors deliver data with daily or weekly temporal resolution. Most land use and land cover (LULC) approaches, however, expect cloud-free and mono-temporal observations. The increasing temporal capabilities of today's sensors enables the use of temporal, along with spectral and spatial features. Domains, such as speech recognition or neural machine translation, work with inherently temporal data and, today, achieve impressive results using sequential encoder-decoder structures. Inspired by these sequence-to-sequence models, we adapt an encoder structure with convolutional recurrent layers in order to approximate a phenological model for vegetation classes based on a temporal sequence of Sentinel 2 (S2) images. In our experiments, we visualize internal activations over a sequence of cloudy and non-cloudy images and find several recurrent cells, which reduce the input activity for cloudy observations. Hence, we assume that our network has learned cloud-filtering schemes solely from input data, which could alleviate the need for tedious cloud-filtering as a preprocessing step for many EO approaches. Moreover, using unfiltered temporal series of top-of-atmosphere (TOA) reflectance data, we achieved in our experiments state-of-the-art classification accuracies on a large number of crop classes with minimal preprocessing compared to other classification approaches.

Results

TaskDatasetMetricValueModel
Semantic SegmentationMunich Sentinel2 Crop SegmentationOverall Accuracy89.6Sequential Recurrent Encoders
10-shot image generationMunich Sentinel2 Crop SegmentationOverall Accuracy89.6Sequential Recurrent Encoders

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