Martin Tomov
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README.md
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license: apache-2.0
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datasets:
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- martintmv/rb-ibdm-l
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# InsectSAM: Insect Segmentation and Monitoring
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## Overview
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InsectSAM is an advanced machine learning model tailored for the
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## Purpose
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This model has been meticulously trained to identify and segment insects against a variety of backgrounds that might otherwise confuse traditional algorithms. It is specifically designed to adapt to future changes in background environments, ensuring its long-term utility in the DIOPSIS project.
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## Model Architecture
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- **InsectSAM.ipynb**: Covers the training process, from data preparation to model evaluation.
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- **InsectSAM_GroundingDINO.ipynb**: Demonstrates how InsectSAM is combined with GroundingDINO for enhanced segmentation performance.
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Check out the notebooks on RB-IBDM's GitHub page - https://github.com/martintmv-git/RB-IBDM/tree/main/InsectSAM
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license: apache-2.0
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# InsectSAM: Insect Segmentation and Monitoring
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## Overview
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InsectSAM is an advanced machine learning model tailored for the https://diopsis.eu camera systems and https://www.arise-biodiversity.nl/, dedicated to Insect Biodiversity Detection and Monitoring in the Netherlands. Built on Meta AI's `segment-anything` model, InsectSAM excels at segmenting insects from complex backgrounds, enhancing the accuracy and efficiency of biodiversity monitoring efforts.
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## Purpose
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This model has been meticulously trained to identify and segment insects against a variety of backgrounds that might otherwise confuse traditional algorithms. It is specifically designed to adapt to future changes in background environments, ensuring its long-term utility in the DIOPSIS / ARISE project.
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## Model Architecture
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- **InsectSAM.ipynb**: Covers the training process, from data preparation to model evaluation.
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- **InsectSAM_GroundingDINO.ipynb**: Demonstrates how InsectSAM is combined with GroundingDINO for enhanced segmentation performance.
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Check out the notebooks on RB-IBDM's GitHub page - https://github.com/martintmv-git/RB-IBDM/tree/main/InsectSAM
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