利用迁移学习和tpu检测胸片中的肺炎

IF 1.5 0 ENGINEERING, MULTIDISCIPLINARY
Niranjan C. Kundur, Bellary Chiterki Anil, Praveen M. Dhulavvagol, Renuka Ganiger, Balakrishnan Ramadoss
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引用次数: 0

摘要

肺炎是一种严重的呼吸道疾病,如果不及时诊断和治疗,可能会造成危及生命的后果。胸部x光通常用于肺炎检测,但解释图像可能会带来挑战。本研究探讨了四种流行的迁移学习模型(即VGG16, ResNet, InceptionNet和DenseNet)以及用于该任务的自定义CNN模型的有效性。使用平均绝对误差(MAE)作为性能度量来评估模型的性能。结果表明,VGG16迁移学习模型的MAE最低(66.19),优于其他迁移学习模型。为了优化模型训练过程,利用TensorFlow的TPU (Tensor Processing Unit,张量处理单元)策略实现了分布式训练策略。自定义CNN模型使用TPU在云上可用的多个实例进行并行化,从而实现高效的计算并行化并显着减少模型训练时间。实验结果表明,与在CPU和GPU上训练相比,使用TPU训练CNN模型的训练次数分别减少了68.36%和54.74%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pneumonia Detection in Chest X-Rays using Transfer Learning and TPUs
Pneumonia is a severe respiratory disease with potentially life-threatening consequences if not promptly diagnosed and treated. Chest X-rays are commonly employed for pneumonia detection, but interpreting the images can pose challenges. This study explores the efficacy of four popular transfer learning models, namely VGG16, ResNet, InceptionNet, and DenseNet, alongside a custom CNN model for this task. The model performance is evaluated using Mean Absolute Error (MAE) as the performance metric. The findings reveal that VGG16 outperforms the other transfer learning models, achieving the lowest MAE (66.19). To optimize the model training process, a distributed training strategy utilizing TensorFlow's TPU (Tensor Processing Unit) strategy is implemented. The custom CNN model is parallelized using TPU's multiple instances available over the cloud, enabling efficient computation parallelization and significantly reducing model training times. The experimental results demonstrate a remarkable decrease of 68.36% and 54.74% in model training times for the CNN model when trained using TPU compared to training on a CPU and GPU, respectively.
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来源期刊
Engineering, Technology & Applied Science Research
Engineering, Technology & Applied Science Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.00
自引率
46.70%
发文量
222
审稿时长
11 weeks
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