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            Chapter Efficient Data Curation Using Active Learning for a Video-Based Fire Detection

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            Author(s)
            Joshi, Keyur
            Dietrich, Philip
            Aziz, Angelina
            König, Markus
            Language
            English
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            Abstract
            Video-based fire detection is a crucial object detection problem that relies on accurate and reliable data to detect fires. However, collecting and labeling fire-related data can be time-consuming and expensive, making it difficult to obtain sufficient data for training machine learning models. To address this challenge, uncertainty-based active learning techniques can be used to iteratively select the most informative samples for labeling. This can reduce the amount of labeled data needed to achieve high model performance and has the potential to even prune the training data with fewer informative samples. The traditional sampling-based uncertainty estimation methods are computationally expensive. Hence, an efficient prior network-based ensemble distillation State-of-the-Art approach is evaluated on an internal dataset which still requires relatively higher overhead computation making it difficult for production deployment. A biased softmax differencing-based uncertainty approach and a feature-based hard data mining approach are proposed and compared with the distillation approach. The novel approaches are found to have a very low overhead uncertainty estimation time compared to the ensemble distillation approach and traditional sampling techniques. The methods are evaluated in the context of curating the unlabeled pool data and improving the training data. For completeness, the experiments are performed on three different data sizes, and overall, the frame-wise selection strategy is proved to be better than the sequence-wise querying strategy. The Principal Component Analysis (PCA)-based hard data mining outperformed other methods and improved the model performance by 16.33% with AUC2% metric when compared with the random selection of data. The approach even outperformed the main network trained on full data by 7.33%, henceforth improving the training data by using informative 26.39% data. The results indicate that novel data mining provides efficient training and pool data curation
            URI
            https://doab-dev.siscern.org/handle/20.500.12854/177928
            Keywords
            Uncertainty Estimation; Active Learning; Object Detection; Outlier Detection; Feature-based cluster analysis; Video-based Fire Detection; thema EDItEUR::U Computing and Information Technology
            DOI
            10.36253/979-12-215-0289-3.60
            ISBN
            9791221502893
            Publisher
            Firenze University Press
            Publisher website
            www.fupress.com/
            Publication date and place
            Florence, 2023
            Series
            Proceedings e report,
            Pages
            9
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              This project received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No 871069.

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