SICKLE: A Multi-Sensor Satellite Imagery Dataset Annotated with Multiple Key Cropping Parameters
Depanshu Sani, Sandeep Mahato, Sourabh Saini, Harsh Kumar Agarwal,, Charu Chandra Devshali, Saket Anand, Gaurav Arora, Thiagarajan Jayaraman

TL;DR
SICKLE is a comprehensive multi-sensor satellite dataset focusing on paddy cultivation in India, annotated with key cropping parameters, enabling advanced ML research in agricultural remote sensing.
Contribution
It introduces the first multi-sensor, multi-temporal satellite dataset with detailed crop annotations and phenology parameters for rice farming in India.
Findings
Benchmark results for crop classification, phenology, and yield prediction.
Dataset enables improved ML models for agricultural monitoring.
First study to include crop phenology parameters in satellite data annotations.
Abstract
The availability of well-curated datasets has driven the success of Machine Learning (ML) models. Despite greater access to earth observation data in agriculture, there is a scarcity of curated and labelled datasets, which limits the potential of its use in training ML models for remote sensing (RS) in agriculture. To this end, we introduce a first-of-its-kind dataset called SICKLE, which constitutes a time-series of multi-resolution imagery from 3 distinct satellites: Landsat-8, Sentinel-1 and Sentinel-2. Our dataset constitutes multi-spectral, thermal and microwave sensors during January 2018 - March 2021 period. We construct each temporal sequence by considering the cropping practices followed by farmers primarily engaged in paddy cultivation in the Cauvery Delta region of Tamil Nadu, India; and annotate the corresponding imagery with key cropping parameters at multiple resolutions…
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Code & Models
Videos
SICKLE: A Multi-Sensor Satellite Imagery Dataset Annotated With Multiple Key Cropping Parameters· youtube
Taxonomy
TopicsRemote Sensing in Agriculture · Smart Agriculture and AI · Remote-Sensing Image Classification
