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Published June 27, 2023 | Version v1
Conference paper Open

Crowd Counting on Heavily Compressed Images with Curriculum Pre-Training

  • 1. DIGIT, the Department of Electrical and Computer Engineering, Aarhus University, Aarhus, Midtjylland, Denmark

Description

JPEG image compression algorithm is a widely used technique for image size reduction in edge and cloud computing settings. However, applying such lossy compression on images processed by deep neural networks can lead to significant accuracy degradation. Inspired by the curriculum learning paradigm, we propose a training approach called curriculum pre-training (CPT) for crowd counting on compressed images, which alleviates the drop in accuracy resulting from lossy compression. We verify the effectiveness of our approach by extensive experiments on three crowd counting datasets, two crowd counting DNN models and various levels of compression. The proposed training method is not overly sensitive to hyper-parameters, and reduces the error, particularly for heavily compressed images, by up to 19.70%.

Notes

This work was funded by the European Union's Horizon 2020 research and innovation programme under grant agreement No 957337, and by the Danish Council for Independent Research under Grant No. 9131-00119B.

Files

Bakhtlarnia_etal_IJCNN_Curriculum_Pre_Training.pdf

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Additional details

Funding

MARVEL – Multimodal Extreme Scale Data Analytics for Smart Cities Environments 957337
European Commission