图像处理源代码-PatchmatchNet-学习多视图立体声

上传者: wenyusuran | 上传时间: 2021-07-05 20:01:48 | 文件大小: 8.53MB | 文件类型: ZIP
这是一种适用于高分辨率多视图立体声的Patchmatch的新颖且可学习的级联公式。与采用3D成本正则化的竞争对手相比,PatchmatchNet具有较高的计算速度和较低的内存需求,可以处理更高分辨率的图像,并且更适合在资源受限的设备上运行。

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