Open TaoHuang95 opened 7 months ago
官方代码
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您好。打扰了。我想问下AssembledBlock是您自己浮现的还是AsConvSR: Fast and Lightweight Super-Resolution Network with Assembled Convolutions他们官方的代码?
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好的,感谢
---- 回复的原邮件 ---- | 发件人 | Zhuoran @.> | | 日期 | 2024年01月31日 10:24 | | 收件人 | @.> | | 抄送至 | Tao @.>@.> | | 主题 | Re: [zzr-idam/UHD-Super-Resolution] AssembledBlock的实现 (Issue #1) |
官方代码
该邮件从移动设备发送
您好。打扰了。我想问下AssembledBlock是您自己浮现的还是AsConvSR: Fast and Lightweight Super-Resolution Network with Assembled Convolutions他们官方的代码?
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可以合作一起投个超高清
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好的,感谢
---- 回复的原邮件 ---- | 发件人 | Zhuoran @.> | | 日期 | 2024年01月31日 10:24 | | 收件人 | @.> | | 抄送至 | Tao @.>@.> | | 主题 | Re: [zzr-idam/UHD-Super-Resolution] AssembledBlock的实现 (Issue #1) |
官方代码
该邮件从移动设备发送
您好。打扰了。我想问下AssembledBlock是您自己浮现的还是AsConvSR: Fast and Lightweight Super-Resolution Network with Assembled Convolutions他们官方的代码?
— Reply to this email directly, view it on GitHub, or unsubscribe. You are receiving this because you are subscribed to this thread.Message ID: @.***>
— Reply to this email directly, view it on GitHub, or unsubscribe. You are receiving this because you authored the thread.Message ID: @.> — Reply to this email directly, view it on GitHub, or unsubscribe. You are receiving this because you commented.Message ID: @.>
是否可以将AssembledBlock中的按输出通道缩放3个卷积核权重改为矩阵操作,去掉for循环呢,这样应该可以加速训练和推理吧
可以试试
该邮件从移动设备发送
是否可以将AssembledBlock中的按输出通道缩放3个卷积核权重改为矩阵操作,去掉for循环呢,这样应该可以加速训练和推理吧
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您好。打扰了。我想问下AssembledBlock是您自己浮现的还是AsConvSR: Fast and Lightweight Super-Resolution Network with Assembled Convolutions他们官方的代码?