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Small Object Detection with YOLO: A Performance Analysis Across Model Versions and Hardware

Small Object Detection with YOLO: A Performance Analysis Across Model Versions and Hardware

来源:Arxiv_logoArxiv
英文摘要

This paper provides an extensive evaluation of YOLO object detection models (v5, v8, v9, v10, v11) by com- paring their performance across various hardware platforms and optimization libraries. Our study investigates inference speed and detection accuracy on Intel and AMD CPUs using popular libraries such as ONNX and OpenVINO, as well as on GPUs through TensorRT and other GPU-optimized frameworks. Furthermore, we analyze the sensitivity of these YOLO models to object size within the image, examining performance when detecting objects that occupy 1%, 2.5%, and 5% of the total area of the image. By identifying the trade-offs in efficiency, accuracy, and object size adaptability, this paper offers insights for optimal model selection based on specific hardware constraints and detection requirements, aiding practitioners in deploying YOLO models effectively for real-world applications.

Muhammad Fasih Tariq、Muhammad Azeem Javed

计算技术、计算机技术

Muhammad Fasih Tariq,Muhammad Azeem Javed.Small Object Detection with YOLO: A Performance Analysis Across Model Versions and Hardware[EB/OL].(2025-04-14)[2025-05-02].https://arxiv.org/abs/2504.09900.点此复制

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