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Bibliographic Details
Main Authors: Khatib, Rwad, Aperstein, Yehudit
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.07049
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author Khatib, Rwad
Aperstein, Yehudit
author_facet Khatib, Rwad
Aperstein, Yehudit
contents This study tackles the challenge of efficiently classifying streaming data in envi-ronments with limited memory and computational resources. It delves into the application of data distillation as an innovative approach to improve the precision of streaming image data classification. By focusing on distilling essential features from data streams, our method aims to minimize computational demands while preserving crucial information for accurate classification. Our investigation com-pares this approach against traditional algorithms like Hoeffding Trees and Adap-tive Random Forest, adapted through embeddings for image data. The Distillation Based Classification (DBC) demonstrated superior performance, achieving a 73.1% accuracy rate, surpassing both traditional methods and Reservoir Sam-pling Based Classification (RBC) technique. This marks a significant advance-ment in streaming data classification, showcasing the effectiveness of our method in processing complex data streams and setting a new standard for accuracy and efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2509_07049
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing Classification of Streaming Data with Image Distillation
Khatib, Rwad
Aperstein, Yehudit
Computer Vision and Pattern Recognition
This study tackles the challenge of efficiently classifying streaming data in envi-ronments with limited memory and computational resources. It delves into the application of data distillation as an innovative approach to improve the precision of streaming image data classification. By focusing on distilling essential features from data streams, our method aims to minimize computational demands while preserving crucial information for accurate classification. Our investigation com-pares this approach against traditional algorithms like Hoeffding Trees and Adap-tive Random Forest, adapted through embeddings for image data. The Distillation Based Classification (DBC) demonstrated superior performance, achieving a 73.1% accuracy rate, surpassing both traditional methods and Reservoir Sam-pling Based Classification (RBC) technique. This marks a significant advance-ment in streaming data classification, showcasing the effectiveness of our method in processing complex data streams and setting a new standard for accuracy and efficiency.
title Enhancing Classification of Streaming Data with Image Distillation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.07049