Exploring DeepSense Neural Network Architecture for Farming Events Detection

Date

2020

Journal Title

Journal ISSN

Volume Title

Publisher

Tartu Ülikool

Abstract

Nowadays satellite imagery became widely available and found to be applicable in a range of different areas. Agriculture is one of those domains. With the help of imagery data there is a set of processes that can be automatized. Thousands of people across the European Union are involved in field inspection. They are checking the crop types and take a record of mowing events that happen on the parcels. Estonia has a relatively high level of cloud coverage and rains during a vegetation season. That leads to interruptions and noises in satellite imagery data. A noise tolerating automated mowing event detection system is required. For this thesis Sentinel-1 coherence for VV and VH polarisation together with Sentinel-2 normalized difference vegetation index were chosen as the main features to build a mowing event recognition system. The architecture DeepSense is implemented and evaluated as a mowing event detection mechanism. The system was trained on Estonia 2018 labeled data containing information about over 1700 fields. An optimal configuration of hyper-parameters was obtained based on experiments with the architecture. Proposed modification of the DeepSense framework allowed to reach 94% event accuracy and 93% end of season event accuracy obtained from 5-fold cross-validation. The DeepSense implementation allowed to outperform a purely convolutional model based on the end of season accuracy metric (93% against 90%). The proposed architecture can be adopted for the mowing event detection tasks.

Description

Keywords

Sentinel-1, Sentinel-2, DeepSense, farming events detection, Convolutional neural networks, Recursive neural networks

Citation