Back Home: A Machine Learning Approach to Seashell Classification and Ecosystem Restoration

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[Submitted on 8 Jan 2025]

View a PDF of the paper titled Back Home: A Machine Learning Approach to Seashell Classification and Ecosystem Restoration, by Alexander Valverde and Luis Solano

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Abstract:In Costa Rica, an average of 5 tons of seashells are extracted from ecosystems annually. Confiscated seashells, cannot be returned to their ecosystems due to the lack of origin recognition. To address this issue, we developed a convolutional neural network (CNN) specifically for seashell identification. We built a dataset from scratch, consisting of approximately 19000 images from the Pacific and Caribbean coasts. Using this dataset, the model achieved a classification accuracy exceeding 85%. The model has been integrated into a user-friendly application, which has classified over 36,000 seashells to date, delivering real-time results within 3 seconds per image. To further enhance the system’s accuracy, an anomaly detection mechanism was incorporated to filter out irrelevant or anomalous inputs, ensuring only valid seashell images are processed.

Submission history

From: Alexander Gabriel Valverde Guillen [view email]
[v1]
Wed, 8 Jan 2025 23:07:10 UTC (6,928 KB)



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