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Main Authors: Impiö, Mikko, Rehsen, Philipp M., Raitoharju, Jenni
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.15844
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author Impiö, Mikko
Rehsen, Philipp M.
Raitoharju, Jenni
author_facet Impiö, Mikko
Rehsen, Philipp M.
Raitoharju, Jenni
contents The amount of image datasets collected for environmental monitoring purposes has increased in the past years as computer vision assisted methods have gained interest. Computer vision applications rely on high-quality datasets, making data curation important. However, data curation is often done ad-hoc and the methods used are rarely published. We present a method for curating large-scale image datasets of invertebrates that contain multiple images of the same taxa and/or specimens and have relatively uniform background in the images. Our approach is based on extracting feature embeddings with pretrained deep neural networks, and using these embeddings to find visually most distinct images by comparing their embeddings to the group prototype embedding. Also, we show that a simple area-based size comparison approach is able to find a lot of common erroneous images, such as images containing detached body parts and misclassified samples. In addition to the method, we propose using novel metrics for evaluating human-in-the-loop outlier detection methods. The implementations of the proposed curation methods, as well as a benchmark dataset containing annotated erroneous images, are publicly available in https://github.com/mikkoim/taxonomist-studio.
format Preprint
id arxiv_https___arxiv_org_abs_2412_15844
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient Curation of Invertebrate Image Datasets Using Feature Embeddings and Automatic Size Comparison
Impiö, Mikko
Rehsen, Philipp M.
Raitoharju, Jenni
Computer Vision and Pattern Recognition
The amount of image datasets collected for environmental monitoring purposes has increased in the past years as computer vision assisted methods have gained interest. Computer vision applications rely on high-quality datasets, making data curation important. However, data curation is often done ad-hoc and the methods used are rarely published. We present a method for curating large-scale image datasets of invertebrates that contain multiple images of the same taxa and/or specimens and have relatively uniform background in the images. Our approach is based on extracting feature embeddings with pretrained deep neural networks, and using these embeddings to find visually most distinct images by comparing their embeddings to the group prototype embedding. Also, we show that a simple area-based size comparison approach is able to find a lot of common erroneous images, such as images containing detached body parts and misclassified samples. In addition to the method, we propose using novel metrics for evaluating human-in-the-loop outlier detection methods. The implementations of the proposed curation methods, as well as a benchmark dataset containing annotated erroneous images, are publicly available in https://github.com/mikkoim/taxonomist-studio.
title Efficient Curation of Invertebrate Image Datasets Using Feature Embeddings and Automatic Size Comparison
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.15844