FisHook -- An Optimized Approach to Marine Specie Classification using
MobileNetV2
- URL: http://arxiv.org/abs/2304.01524v1
- Date: Tue, 4 Apr 2023 04:30:25 GMT
- Title: FisHook -- An Optimized Approach to Marine Specie Classification using
MobileNetV2
- Authors: Kohav Dey, Krishna Bajaj, K S Ramalakshmi, Samuel Thomas, Sriram
Radhakrishna
- Abstract summary: classification and monitoring of marine species can aid in understanding their distribution, population dynamics, and the impact of human activities on them.
Deep-learning algorithms can now efficiently classify marine species, making it easier to monitor and manage marine ecosystems.
- Score: 5.565562836494568
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Marine ecosystems are vital for the planet's health, but human activities
such as climate change, pollution, and overfishing pose a constant threat to
marine species. Accurate classification and monitoring of these species can aid
in understanding their distribution, population dynamics, and the impact of
human activities on them. However, classifying marine species can be
challenging due to their vast diversity and the complex underwater environment.
With advancements in computer performance and GPU-based computing,
deep-learning algorithms can now efficiently classify marine species, making it
easier to monitor and manage marine ecosystems. In this paper, we propose an
optimization to the MobileNetV2 model to achieve a 99.83% average validation
accuracy by highlighting specific guidelines for creating a dataset and
augmenting marine species images. This transfer learning algorithm can be
deployed successfully on a mobile application for on-site classification at
fisheries.
Related papers
- Towards an Autonomous Surface Vehicle Prototype for Artificial Intelligence Applications of Water Quality Monitoring [68.41400824104953]
This paper presents a vehicle prototype that addresses the use of Artificial Intelligence algorithms and enhanced sensing techniques for water quality monitoring.
The vehicle is fully equipped with high-quality sensors to measure water quality parameters and water depth.
By means of a stereo-camera, it also can detect and locate macro-plastics in real environments.
arXiv Detail & Related papers (2024-10-08T10:35:32Z) - A Computer Vision Approach to Estimate the Localized Sea State [45.498315114762484]
This research focuses on utilizing sea images in operational envelopes captured by a single stationary camera mounted on the ship bridge.
The collected images are used to train a deep learning model to automatically recognize the state of the sea based on the Beaufort scale.
arXiv Detail & Related papers (2024-07-04T09:07:25Z) - BenthIQ: a Transformer-Based Benthic Classification Model for Coral
Restoration [4.931399476945033]
Coral reefs are vital for marine biodiversity, coastal protection, and supporting human livelihoods globally.
Current methods for creating benthic composition maps often compromise between spatial coverage and resolution.
We introduce BenthIQ, a multi-label semantic segmentation network designed for high-precision classification of underwater substrates.
arXiv Detail & Related papers (2023-11-22T19:25:31Z) - Whale Detection Enhancement through Synthetic Satellite Images [13.842008598751445]
We show that we can achieve a 15% performance boost on whale detection compared to using the real data alone for training.
We open source the code of the simulation platform SeaDroneSim2 and the dataset generated through it.
arXiv Detail & Related papers (2023-08-15T13:35:29Z) - 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) - Applications of Deep Learning in Fish Habitat Monitoring: A Tutorial and
Survey [1.9249287163937976]
Deep learning (DL) is a cutting-edge AI technology that has demonstrated unprecedented performance in analysing visual data.
In this paper, we provide a tutorial that covers the key concepts of DL, which help the reader grasp a high-level understanding of how DL works.
The tutorial also explains a step-by-step procedure on how DL algorithms should be developed for challenging applications such as underwater fish monitoring.
arXiv Detail & Related papers (2022-06-11T01:59:54Z) - Seeing biodiversity: perspectives in machine learning for wildlife
conservation [49.15793025634011]
We argue that machine learning can meet this analytic challenge to enhance our understanding, monitoring capacity, and conservation of wildlife species.
In essence, by combining new machine learning approaches with ecological domain knowledge, animal ecologists can capitalize on the abundance of data generated by modern sensor technologies.
arXiv Detail & Related papers (2021-10-25T13:40:36Z) - Unlocking the potential of deep learning for marine ecology: overview,
applications, and outlook [8.3226670069051]
This paper aims to bridge the gap between marine ecologists and computer scientists.
We provide insight into popular deep learning approaches for ecological data analysis in plain language.
We illustrate challenges and opportunities through established and emerging applications of deep learning to marine ecology.
arXiv Detail & Related papers (2021-09-29T21:59:16Z) - SALT: Sea lice Adaptive Lattice Tracking -- An Unsupervised Approach to
Generate an Improved Ocean Model [72.3183990520267]
We propose SALT: Sea lice Adaptive Lattice Tracking approach for efficient estimation of sea lice dispersion and distribution.
Specifically, an adaptive spatial mesh is generated by merging nodes in the lattice graph of the Ocean Model based on local ocean properties.
The proposed SALT technique shows promise for enhancing proactive aquaculture management through predictive modelling of sea lice infestation pressure maps in a changing climate.
arXiv Detail & Related papers (2021-06-24T17:29:42Z) - Movement Tracks for the Automatic Detection of Fish Behavior in Videos [63.85815474157357]
We offer a dataset of sablefish (Anoplopoma fimbria) startle behaviors in underwater videos, and investigate the use of deep learning (DL) methods for behavior detection on it.
Our proposed detection system identifies fish instances using DL-based frameworks, determines trajectory tracks, derives novel behavior-specific features, and employs Long Short-Term Memory (LSTM) networks to identify startle behavior in sablefish.
arXiv Detail & Related papers (2020-11-28T05:51:19Z) - Automatic image-based identification and biomass estimation of
invertebrates [70.08255822611812]
Time-consuming sorting and identification of taxa pose strong limitations on how many insect samples can be processed.
We propose to replace the standard manual approach of human expert-based sorting and identification with an automatic image-based technology.
We use state-of-the-art Resnet-50 and InceptionV3 CNNs for the classification task.
arXiv Detail & Related papers (2020-02-05T21:38:57Z)
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.