Prawn Morphometrics and Weight Estimation from Images using Deep Learning for Landmark Localization
Alzayat Saleh, Md Mehedi Hasan, Herman W Raadsma, Mehar S Khatkar,, Dean R Jerry, and Mostafa Rahimi Azghadi

TL;DR
This study presents a novel deep learning method for automating weight estimation and morphometric analysis of prawns from images, improving accuracy and efficiency over existing methods in aquaculture applications.
Contribution
The paper introduces a new deep learning framework combining feature extraction and landmark localization for prawn phenotyping, enabling rapid, accurate weight and shape analysis from images.
Findings
Outperforms existing methods in accuracy and robustness
Successfully estimates prawn weight from images
Identifies key morphological traits using landmarks
Abstract
Accurate weight estimation and morphometric analyses are useful in aquaculture for optimizing feeding, predicting harvest yields, identifying desirable traits for selective breeding, grading processes, and monitoring the health status of production animals. However, the collection of phenotypic data through traditional manual approaches at industrial scales and in real-time is time-consuming, labour-intensive, and prone to errors. Digital imaging of individuals and subsequent training of prediction models using Deep Learning (DL) has the potential to rapidly and accurately acquire phenotypic data from aquaculture species. In this study, we applied a novel DL approach to automate weight estimation and morphometric analysis using the black tiger prawn (Penaeus monodon) as a model crustacean. The DL approach comprises two main components: a feature extraction module that efficiently…
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Taxonomy
TopicsFish Biology and Ecology Studies · Aquaculture Nutrition and Growth · Water Quality Monitoring Technologies
