Self-Supervised Data Generation for Precision Agriculture: Blending Simulated Environments with Real Imagery
- URL: http://arxiv.org/abs/2502.18320v1
- Date: Tue, 25 Feb 2025 16:13:49 GMT
- Title: Self-Supervised Data Generation for Precision Agriculture: Blending Simulated Environments with Real Imagery
- Authors: Leonardo Saraceni, Ionut Marian Motoi, Daniele Nardi, Thomas Alessandro Ciarfuglia,
- Abstract summary: In precision agriculture, the scarcity of labeled data poses unique challenges for training machine learning models.<n>We propose a novel system for generating realistic synthetic data to address these challenges.<n>We demonstrate considerable performance improvements in training a state-of-the-art detector by applying our method to table grapes cultivation.
- Score: 3.9845810840390734
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In precision agriculture, the scarcity of labeled data and significant covariate shifts pose unique challenges for training machine learning models. This scarcity is particularly problematic due to the dynamic nature of the environment and the evolving appearance of agricultural subjects as living things. We propose a novel system for generating realistic synthetic data to address these challenges. Utilizing a vineyard simulator based on the Unity engine, our system employs a cut-and-paste technique with geometrical consistency considerations to produce accurate photo-realistic images and labels from synthetic environments to train detection algorithms. This approach generates diverse data samples across various viewpoints and lighting conditions. We demonstrate considerable performance improvements in training a state-of-the-art detector by applying our method to table grapes cultivation. The combination of techniques can be easily automated, an increasingly important consideration for adoption in agricultural practice.
Related papers
- Drive-1-to-3: Enriching Diffusion Priors for Novel View Synthesis of Real Vehicles [81.29018359825872]
This paper consolidates a set of good practices to finetune large pretrained models for a real-world task.
Specifically, we develop several strategies to account for discrepancies between the synthetic data and real driving data.
Our insights lead to effective finetuning that results in a $68.8%$ reduction in FID for novel view synthesis over prior arts.
arXiv Detail & Related papers (2024-12-19T03:39:13Z) - Exploring Generative AI for Sim2Real in Driving Data Synthesis [6.769182994217369]
Driving simulators offer a solution by automatically generating various driving scenarios with corresponding annotations, but the simulation-to-reality (Sim2Real) domain gap remains a challenge.
This paper applied three different generative AI methods to leverage semantic label maps from a driving simulator as a bridge for the creation of realistic datasets.
Experiments show that although GAN-based methods are adept at generating high-quality images when provided with manually annotated labels, ControlNet produces synthetic datasets with fewer artefacts and more structural fidelity when using simulator-generated labels.
arXiv Detail & Related papers (2024-04-14T01:23:19Z) - Is Synthetic Image Useful for Transfer Learning? An Investigation into Data Generation, Volume, and Utilization [62.157627519792946]
We introduce a novel framework called bridged transfer, which initially employs synthetic images for fine-tuning a pre-trained model to improve its transferability.
We propose dataset style inversion strategy to improve the stylistic alignment between synthetic and real images.
Our proposed methods are evaluated across 10 different datasets and 5 distinct models, demonstrating consistent improvements.
arXiv Detail & Related papers (2024-03-28T22:25:05Z) - Generating Diverse Agricultural Data for Vision-Based Farming Applications [74.79409721178489]
This model is capable of simulating distinct growth stages of plants, diverse soil conditions, and randomized field arrangements under varying lighting conditions.
Our dataset includes 12,000 images with semantic labels, offering a comprehensive resource for computer vision tasks in precision agriculture.
arXiv Detail & Related papers (2024-03-27T08:42:47Z) - Deep Domain Adaptation: A Sim2Real Neural Approach for Improving Eye-Tracking Systems [80.62854148838359]
Eye image segmentation is a critical step in eye tracking that has great influence over the final gaze estimate.
We use dimensionality-reduction techniques to measure the overlap between the target eye images and synthetic training data.
Our methods result in robust, improved performance when tackling the discrepancy between simulation and real-world data samples.
arXiv Detail & Related papers (2024-03-23T22:32:06Z) - Real-time object detection and robotic manipulation for agriculture
using a YOLO-based learning approach [8.482182765640022]
This study presents a new framework that combines two separate architectures of convolutional neural networks (CNNs)
Crop images in a simulated environment are subjected to random rotations, cropping, brightness, and contrast adjustments to create augmented images for dataset generation.
The proposed method subsequently utilise the acquired image data via a visual geometry group model in order to reveal the grasping positions for the robotic manipulation.
arXiv Detail & Related papers (2024-01-28T22:30:50Z) - DT/MARS-CycleGAN: Improved Object Detection for MARS Phenotyping Robot [11.869108981066429]
This work proposes a novel Digital-Twin(DT)MARS-CycleGAN model for image augmentation to improve our Modular Agricultural Robotic System's crop object detection.
In addition to the cycle consistency losses in the CycleGAN model, we designed and enforced a new DT-MARS loss in the deep learning model to penalize the inconsistency between real crop images captured by MARS and synthesized images sensed by DT MARS.
arXiv Detail & Related papers (2023-10-19T14:39:34Z) - TRoVE: Transforming Road Scene Datasets into Photorealistic Virtual
Environments [84.6017003787244]
This work proposes a synthetic data generation pipeline to address the difficulties and domain-gaps present in simulated datasets.
We show that using annotations and visual cues from existing datasets, we can facilitate automated multi-modal data generation.
arXiv Detail & Related papers (2022-08-16T20:46:08Z) - Estimating Crop Primary Productivity with Sentinel-2 and Landsat 8 using
Machine Learning Methods Trained with Radiative Transfer Simulations [58.17039841385472]
We take advantage of all parallel developments in mechanistic modeling and satellite data availability for advanced monitoring of crop productivity.
Our model successfully estimates gross primary productivity across a variety of C3 crop types and environmental conditions even though it does not use any local information from the corresponding sites.
This highlights its potential to map crop productivity from new satellite sensors at a global scale with the help of current Earth observation cloud computing platforms.
arXiv Detail & Related papers (2020-12-07T16:23:13Z) - Multi-Spectral Image Synthesis for Crop/Weed Segmentation in Precision
Farming [3.4788711710826083]
We propose an alternative solution with respect to the common data augmentation methods, applying it to the problem of crop/weed segmentation in precision farming.
We create semi-artificial samples by replacing the most relevant object classes (i.e., crop and weeds) with their synthesized counterparts.
In addition to RGB data, we take into account also near-infrared (NIR) information, generating four channel multi-spectral synthetic images.
arXiv Detail & Related papers (2020-09-12T08:49:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.