卷积神经网络在生物医学图像上的应用进展(10)
随着卷积神经网络和深度学习理论和应用研究的推进,相信上述问题将得到很好的解决,进而促进CNN网络及其他相关技术在生物医学图像的自动处理和分析中的应用,并最终实现方法和系统的落地应用。
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