Journal of Innovative Optical Health Sciences, Volume. 15, Issue 3, 2250018(2022)
ICA-Unet: An improved U-net network for brown adipose tissue segmentation
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[in Chinese], [in Chinese], [in Chinese], [in Chinese], [in Chinese], [in Chinese], [in Chinese]. ICA-Unet: An improved U-net network for brown adipose tissue segmentation[J]. Journal of Innovative Optical Health Sciences, 2022, 15(3): 2250018
Received: Jan. 2, 2022
Accepted: Feb. 20, 2022
Published Online: Aug. 26, 2022
The Author Email: (fmmukf@qq.com)