Precision Aquaculture: An Integrated Computer Vision and IoT Approach for Optimized Tilapia Feeding
- URL: http://arxiv.org/abs/2409.08695v3
- Date: Wed, 25 Sep 2024 03:34:45 GMT
- Title: Precision Aquaculture: An Integrated Computer Vision and IoT Approach for Optimized Tilapia Feeding
- Authors: Rania Hossam, Ahmed Heakl, Walid Gomaa,
- Abstract summary: Traditional fish farming practices lead to inefficient feeding, resulting in environmental issues and reduced productivity.
We developed an innovative system combining computer vision and IoT technologies for precise Tilapia feeding.
Preliminary estimates suggest this approach could increase production up to 58 times compared to traditional farms.
- Score: 1.9198713957364215
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traditional fish farming practices often lead to inefficient feeding, resulting in environmental issues and reduced productivity. We developed an innovative system combining computer vision and IoT technologies for precise Tilapia feeding. Our solution uses real-time IoT sensors to monitor water quality parameters and computer vision algorithms to analyze fish size and count, determining optimal feed amounts. A mobile app enables remote monitoring and control. We utilized YOLOv8 for keypoint detection to measure Tilapia weight from length, achieving \textbf{94\%} precision on 3,500 annotated images. Pixel-based measurements were converted to centimeters using depth estimation for accurate feeding calculations. Our method, with data collection mirroring inference conditions, significantly improved results. Preliminary estimates suggest this approach could increase production up to 58 times compared to traditional farms. Our models, code, and dataset are open-source~\footnote{The code, dataset, and models are available upon reasonable request.
Related papers
- Quanv4EO: Empowering Earth Observation by means of Quanvolutional Neural Networks [62.12107686529827]
This article highlights a significant shift towards leveraging quantum computing techniques in processing large volumes of remote sensing data.
The proposed Quanv4EO model introduces a quanvolution method for preprocessing multi-dimensional EO data.
Key findings suggest that the proposed model not only maintains high precision in image classification but also shows improvements of around 5% in EO use cases.
arXiv Detail & Related papers (2024-07-24T09:11:34Z) - FishMOT: A Simple and Effective Method for Fish Tracking Based on IoU
Matching [11.39414015803651]
FishMOT is a novel fish tracking approach combining object detection and objectoU matching.
The method exhibits excellent robustness and generalizability for varying environments and fish numbers.
arXiv Detail & Related papers (2023-09-06T13:16:41Z) - Prawn Morphometrics and Weight Estimation from Images using Deep
Learning for Landmark Localization [2.778518997767646]
We developed a novel approach to automate weight estimation and morphometric analysis using the black tiger prawn (Penaeus monodon) as a model crustacean.
For morphometric analyses, we utilized the detected landmarks to derive five important prawn traits.
Our experimental results demonstrate that the novel DL approach outperforms existing DL methods in terms of accuracy, robustness, and efficiency.
arXiv Detail & Related papers (2023-07-15T07:05:06Z) - TempNet: Temporal Attention Towards the Detection of Animal Behaviour in
Videos [63.85815474157357]
We propose an efficient computer vision- and deep learning-based method for the detection of biological behaviours in videos.
TempNet uses an encoder bridge and residual blocks to maintain model performance with a two-staged, spatial, then temporal, encoder.
We demonstrate its application to the detection of sablefish (Anoplopoma fimbria) startle events.
arXiv Detail & Related papers (2022-11-17T23:55:12Z) - Automatic Controlling Fish Feeding Machine using Feature Extraction of
Nutriment and Ripple Behavior [0.0]
We propose automatic controlling fish feeding machine based on computer vision using combination of counting nutriments and estimating ripple behavior.
Based on the number of nutriments and ripple behavior, we can control fish feeding machine which consistently performs well in real environment.
arXiv Detail & Related papers (2022-08-15T05:52:37Z) - DeepTimeAnomalyViz: A Tool for Visualizing and Post-processing Deep
Learning Anomaly Detection Results for Industrial Time-Series [88.12892448747291]
We introduce the DeTAVIZ interface, which is a web browser based visualization tool for quick exploration and assessment of feasibility of DL based anomaly detection in a given problem.
DeTAVIZ allows the user to easily and quickly iterate through multiple post processing options and compare different models, and allows for manual optimisation towards a chosen metric.
arXiv Detail & Related papers (2021-09-21T10:38:26Z) - Scale-aware direct monocular odometry [4.111899441919165]
We present a framework for direct monocular odometry based on depth prediction from a deep neural network.
Our proposal largely outperforms classic monocular SLAM, being 5 to 9 times more precise, with an accuracy which is closer to that of stereo systems.
arXiv Detail & Related papers (2021-09-21T10:30:15Z) - Tuna Nutriment Tracking using Trajectory Mapping in Application to
Aquaculture Fish Tank [0.0]
Estimating a state of fishes in a tank and adjusting an amount of nutriments play an important role to manage cost of fish feeding system.
Our approach is based on tracking nutriments on videos collected from an active aquaculture fish farm.
arXiv Detail & Related papers (2021-03-10T06:02:19Z) - Enhancing sensor resolution improves CNN accuracy given the same number
of parameters or FLOPS [53.10151901863263]
We show that it is almost always possible to modify a network such that it achieves higher accuracy at a higher input resolution while having the same number of parameters or/and FLOPS.
Preliminary empirical investigation over MNIST, Fashion MNIST, and CIFAR10 datasets demonstrates the efficiency of the proposed approach.
arXiv Detail & Related papers (2021-03-09T06:47:01Z) - 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) - Learning Monocular Dense Depth from Events [53.078665310545745]
Event cameras produce brightness changes in the form of a stream of asynchronous events instead of intensity frames.
Recent learning-based approaches have been applied to event-based data, such as monocular depth prediction.
We propose a recurrent architecture to solve this task and show significant improvement over standard feed-forward methods.
arXiv Detail & Related papers (2020-10-16T12:36:23Z)
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.