Towards Generating Large Synthetic Phytoplankton Datasets for Efficient
Monitoring of Harmful Algal Blooms
- URL: http://arxiv.org/abs/2208.02332v1
- Date: Wed, 3 Aug 2022 20:15:55 GMT
- Title: Towards Generating Large Synthetic Phytoplankton Datasets for Efficient
Monitoring of Harmful Algal Blooms
- Authors: Nitpreet Bamra, Vikram Voleti, Alexander Wong, Jason Deglint
- Abstract summary: Harmful algal blooms (HABs) cause significant fish deaths in aquaculture farms.
Currently, the standard method to enumerate harmful algae and other phytoplankton is to manually observe and count them under a microscope.
We employ Generative Adversarial Networks (GANs) to generate synthetic images.
- Score: 77.25251419910205
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Climate change is increasing the frequency and severity of harmful algal
blooms (HABs), which cause significant fish deaths in aquaculture farms. This
contributes to ocean pollution and greenhouse gas (GHG) emissions since dead
fish are either dumped into the ocean or taken to landfills, which in turn
negatively impacts the climate. Currently, the standard method to enumerate
harmful algae and other phytoplankton is to manually observe and count them
under a microscope. This is a time-consuming, tedious and error-prone process,
resulting in compromised management decisions by farmers. Hence, automating
this process for quick and accurate HAB monitoring is extremely helpful.
However, this requires large and diverse datasets of phytoplankton images, and
such datasets are hard to produce quickly. In this work, we explore the
feasibility of generating novel high-resolution photorealistic synthetic
phytoplankton images, containing multiple species in the same image, given a
small dataset of real images. To this end, we employ Generative Adversarial
Networks (GANs) to generate synthetic images. We evaluate three different GAN
architectures: ProjectedGAN, FastGAN, and StyleGANv2 using standard image
quality metrics. We empirically show the generation of high-fidelity synthetic
phytoplankton images using a training dataset of only 961 real images. Thus,
this work demonstrates the ability of GANs to create large synthetic datasets
of phytoplankton from small training datasets, accomplishing a key step towards
sustainable systematic monitoring of harmful algal blooms.
Related papers
- Recognition of Harmful Phytoplankton from Microscopic Images using Deep Learning [1.03590082373586]
Monitoring plankton distribution is vital for preserving aquatic ecosystems, regulating the global climate, and ensuring environmental protection.
Traditional methods for monitoring are often time-consuming, expensive, error-prone, and unsuitable for large-scale applications.
We evaluate several state-of-the-art CNN models, including ResNet, ResNeXt, DenseNet, and EfficientNet, using three transfer learning approaches to classify eleven harmful phytoplankton genera from microscopic images.
arXiv Detail & Related papers (2024-09-19T16:42:53Z) - A deep learning approach for marine snow synthesis and removal [55.86191108738564]
This paper proposes a novel method to reduce the marine snow interference using deep learning techniques.
We first synthesize realistic marine snow samples by training a Generative Adversarial Network (GAN) model.
We then train a U-Net model to perform marine snow removal as an image to image translation task.
arXiv Detail & Related papers (2023-11-27T07:19:41Z) - PlantPlotGAN: A Physics-Informed Generative Adversarial Network for
Plant Disease Prediction [2.7409168462107347]
We propose PlantPlotGAN, a physics-informed generative model capable of creating synthetic multispectral plot images with realistic vegetation indices.
The results demonstrate that the synthetic imagery generated from PlantPlotGAN outperforms state-of-the-art methods regarding the Fr'echet inception distance.
arXiv Detail & Related papers (2023-10-27T16:56:28Z) - Efficient Unsupervised Learning for Plankton Images [12.447149371717]
Monitoring plankton populations in situ is fundamental to preserve the aquatic ecosystem.
The adoption of machine learning algorithms to classify such data may be affected by the significant cost of manual annotation.
We propose an efficient unsupervised learning pipeline to provide accurate classification of plankton microorganisms.
arXiv Detail & Related papers (2022-09-14T15:33:16Z) - Ensembles of Vision Transformers as a New Paradigm for Automated
Classification in Ecology [0.0]
We show that ensembles of Data-efficient image Transformers (DeiTs) significantly outperform the previous state of the art (SOTA)
On all the data sets we test, we achieve a new SOTA, with a reduction of the error with respect to the previous SOTA ranging from 18.48% to 87.50%.
arXiv Detail & Related papers (2022-03-03T14:16:22Z) - Deep Learning Classification of Lake Zooplankton [0.0]
We present a set of deep learning models developed for the identification of lake plankton.
To this aim, we annotated into 35 classes over 17900 images of zooplankton and large phytoplankton colonies.
Our best models were based on transfer learning and ensembling, which classified plankton images with 98% accuracy and 93% F1 score.
arXiv Detail & Related papers (2021-08-11T14:57:43Z) - Spatial-Temporal Super-Resolution of Satellite Imagery via Conditional
Pixel Synthesis [66.50914391487747]
We propose a new conditional pixel synthesis model that uses abundant, low-cost, low-resolution imagery to generate accurate high-resolution imagery.
We show that our model attains photo-realistic sample quality and outperforms competing baselines on a key downstream task -- object counting.
arXiv Detail & Related papers (2021-06-22T02:16:24Z) - Potato Crop Stress Identification in Aerial Images using Deep
Learning-based Object Detection [60.83360138070649]
The paper presents an approach for analyzing aerial images of a potato crop using deep neural networks.
The main objective is to demonstrate automated spatial recognition of a healthy versus stressed crop at a plant level.
Experimental validation demonstrated the ability for distinguishing healthy and stressed plants in field images, achieving an average Dice coefficient of 0.74.
arXiv Detail & Related papers (2021-06-14T21:57:40Z) - 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) - FD-GAN: Generative Adversarial Networks with Fusion-discriminator for
Single Image Dehazing [48.65974971543703]
We propose a fully end-to-end Generative Adversarial Networks with Fusion-discriminator (FD-GAN) for image dehazing.
Our model can generator more natural and realistic dehazed images with less color distortion and fewer artifacts.
Experiments have shown that our method reaches state-of-the-art performance on both public synthetic datasets and real-world images.
arXiv Detail & Related papers (2020-01-20T04:36:11Z)
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.