cs.AI updates on arXiv.org 07月22日 12:44
Performance comparison of medical image classification systems using TensorFlow Keras, PyTorch, and JAX
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本文对比了TensorFlow with Keras、PyTorch和JAX三种深度学习框架在BloodMNIST数据集上对血液细胞图像进行分类的性能,发现这些框架在血液图像分析中表现出色,且分类精度与现有基准相当。

arXiv:2507.14587v1 Announce Type: cross Abstract: Medical imaging plays a vital role in early disease diagnosis and monitoring. Specifically, blood microscopy offers valuable insights into blood cell morphology and the detection of hematological disorders. In recent years, deep learning-based automated classification systems have demonstrated high potential in enhancing the accuracy and efficiency of blood image analysis. However, a detailed performance analysis of specific deep learning frameworks appears to be lacking. This paper compares the performance of three popular deep learning frameworks, TensorFlow with Keras, PyTorch, and JAX, in classifying blood cell images from the publicly available BloodMNIST dataset. The study primarily focuses on inference time differences, but also classification performance for different image sizes. The results reveal variations in performance across frameworks, influenced by factors such as image resolution and framework-specific optimizations. Classification accuracy for JAX and PyTorch was comparable to current benchmarks, showcasing the efficiency of these frameworks for medical image classification.

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相关标签

深度学习 血液图像分析 框架比较 分类性能 BloodMNIST数据集
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