Deep learning techniques, particularly convolutional neural networks, have shown great potential in computer vision and medical imaging applications. However, deep learning models are computationally demanding as they require enormous computational power and specialized processing hardware for model training. To make these models portable and compatible for prototyping, their implementation on low-power devices is imperative. In this work, we present the implementation of Modified U-Net on Intel Movidius Neural Compute Stick 2 (NCS-2) for the segmentation of medical images. We selected U-Net because, in medical image segmentation, U-Net is a prominent model that provides improved performance for medical image segmentation even if the dataset size is small. The modified U-Net model is evaluated for performance in terms of dice score. Experiments are reported for segmentation task on three medical imaging datasets: BraTs dataset of brain MRI, heart MRI dataset, and Ziehl-Neelsen sputum smear microscopy image (ZNSDB) dataset. For the proposed model, we reduced the number of parameters from 30 million in the U-Net model to 0.49 million in the proposed architecture. Experimental results show that the modified U-Net provides comparable performance while requiring significantly lower resources and provides inference on the NCS-2. The maximum dice scores recorded are 0.96 for the BraTs dataset, 0.94 for the heart MRI dataset, and 0.74 for the ZNSDB dataset.
翻译:深层学习技术,特别是进化神经网络,在计算机视觉和医学成像应用方面显示出巨大的潜力。然而,深深层学习模型在计算上要求很高,因为它们需要巨大的计算力和用于模型培训的专门处理硬件。要使这些模型具有可移植性和兼容性,就必须在低功率设备上实施这些模型。在这项工作中,我们介绍了在Intel Movidius Neal Comput Stick 2 (NCS-2) 上对医疗图像分割的修改 U-Net 。我们选择了U-Net,因为在医学成像分割中,U-Net是一个突出的模型,它为医学成像的分割提供了更好的性能表现,即使数据集大小小,也为模型提供了医疗成分数。修改后的U-Net模型的参数数从3000万个减少到0.49亿个,而模型中的可比较性能数据显示为0.49亿个。