Towards DeepSentinel: An extensible corpus of labelled Sentinel-1 and -2 imagery and a general-purpose sensor-fusion semantic embedding model

11 Feb 2021 Lucas Kruitwagen

Earth observation offers new insight into anthropogenic changes to nature, and how these changes are effecting (and are effected by) the built environment and the real economy. With the global availability of medium-resolution (10-30m) synthetic aperture radar (SAR) Sentinel-1 and multispectral Sentinel-2 imagery, machine learning can be employed to offer these insights at scale, unbiased to the reporting of companies and countries... (read more)

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METHOD TYPE
Average Pooling
Pooling Operations
ReLU
Activation Functions
Batch Normalization
Normalization
Global Average Pooling
Pooling Operations
Residual Block
Skip Connection Blocks
Max Pooling
Pooling Operations
Residual Connection
Skip Connections
Kaiming Initialization
Initialization
1x1 Convolution
Convolutions
Convolution
Convolutions
Bottleneck Residual Block
Skip Connection Blocks
ResNet
Convolutional Neural Networks