Python 官方文档:入门教程 => 点击学习
目录一. torch.cat()函数解析1. 函数说明2. 代码举例总结一. torch.cat()函数解析 1. 函数说明 1.1 官网:torch.cat(),函数定义及参数说明
1.1 官网:torch.cat(),函数定义及参数说明如下图所示:
1.2 函数功能
函数将两个张量(tensor)按指定维度拼接在一起,注意:除拼接维数dim数值可不同外其余维数数值需相同,方能对齐,如下面例子所示。torch.cat()函数不会新增维度,而torch.stack()函数会新增一个维度,相同的是两个都是对张量进行拼接
2.1 输入两个二维张量(dim=0):dim=0对行进行拼接
a = torch.randn(2,3)
b = torch.randn(3,3)
c = torch.cat((a,b),dim=0)
a,b,c
输出结果如下:
(tensor([[-0.90, -0.37, 1.96],
[-2.65, -0.60, 0.05]]),
tensor([[ 1.30, 0.24, 0.27],
[-1.99, -1.09, 1.67],
[-1.62, 1.54, -0.14]]),
tensor([[-0.90, -0.37, 1.96],
[-2.65, -0.60, 0.05],
[ 1.30, 0.24, 0.27],
[-1.99, -1.09, 1.67],
[-1.62, 1.54, -0.14]]))
2.2 输入两个二维张量(dim=1): dim=1对列进行拼接
a = torch.randn(2,3)
b = torch.randn(2,4)
c = torch.cat((a,b),dim=1)
a,b,c
输出结果如下:
(tensor([[-0.55, -0.84, -1.60],
[ 0.39, -0.96, 1.02]]),
tensor([[-0.83, -0.09, 0.05, 0.17],
[ 0.28, -0.74, -0.27, -0.85]]),
tensor([[-0.55, -0.84, -1.60, -0.83, -0.09, 0.05, 0.17],
[ 0.39, -0.96, 1.02, 0.28, -0.74, -0.27, -0.85]]))
2.3 输入两个三维张量:dim=0 对通道进行拼接
a = torch.randn(2,3,4)
b = torch.randn(1,3,4)
c = torch.cat((a,b),dim=0)
a,b,c
输出结果如下:
(tensor([[[ 0.51, -0.72, -0.02, 0.76],
[ 0.72, 1.01, 0.39, -0.13],
[ 0.37, -0.63, -2.69, 0.74]],
[[ 0.72, -0.31, -0.27, 0.10],
[ 1.66, -0.06, 1.91, -0.66],
[ 0.34, -0.23, -0.18, -1.22]]]),
tensor([[[ 0.94, 0.77, -0.41, -1.20],
[-0.23, -1.03, -0.25, 1.67],
[-1.00, -0.68, -0.35, -0.50]]]),
tensor([[[ 0.51, -0.72, -0.02, 0.76],
[ 0.72, 1.01, 0.39, -0.13],
[ 0.37, -0.63, -2.69, 0.74]],
[[ 0.72, -0.31, -0.27, 0.10],
[ 1.66, -0.06, 1.91, -0.66],
[ 0.34, -0.23, -0.18, -1.22]],
[[ 0.94, 0.77, -0.41, -1.20],
[-0.23, -1.03, -0.25, 1.67],
[-1.00, -0.68, -0.35, -0.50]]]))
2.4 输入两个三维张量:dim=1对行进行拼接
a = torch.randn(2,3,4)
b = torch.randn(2,4,4)
c = torch.cat((a,b),dim=1)
a,b,c
输出结果如下:
(tensor([[[-0.86, 0.00, -1.26, 1.20],
[-0.46, -1.08, -0.82, 2.03],
[-0.89, 0.43, 1.92, 0.49]],
[[ 0.24, -0.02, 0.32, 0.97],
[ 0.33, -1.34, 0.76, -1.55],
[ 0.38, 1.45, 0.27, -0.64]]]),
tensor([[[ 0.82, 0.85, -0.30, -0.58],
[-0.09, 0.40, 0.02, 0.75],
[-0.70, 0.67, -0.88, -0.50],
[-0.62, -1.65, -1.10, -1.39]],
[[-0.85, -1.61, -0.35, -0.56],
[ 0.00, 1.40, 0.41, 0.39],
[-0.01, 0.04, 0.80, 0.41],
[-1.21, -0.64, 1.14, 1.64]]]),
tensor([[[-0.86, 0.00, -1.26, 1.20],
[-0.46, -1.08, -0.82, 2.03],
[-0.89, 0.43, 1.92, 0.49],
[ 0.82, 0.85, -0.30, -0.58],
[-0.09, 0.40, 0.02, 0.75],
[-0.70, 0.67, -0.88, -0.50],
[-0.62, -1.65, -1.10, -1.39]],
[[ 0.24, -0.02, 0.32, 0.97],
[ 0.33, -1.34, 0.76, -1.55],
[ 0.38, 1.45, 0.27, -0.64],
[-0.85, -1.61, -0.35, -0.56],
[ 0.00, 1.40, 0.41, 0.39],
[-0.01, 0.04, 0.80, 0.41],
[-1.21, -0.64, 1.14, 1.64]]]))
2.5 输入两个三维张量:dim=2对列进行拼接
a = torch.randn(2,3,4)
b = torch.randn(2,3,5)
c = torch.cat((a,b),dim=2)
a,b,c
输出结果如下:
(tensor([[[ 0.13, -0.02, 0.13, -0.25],
[ 1.42, -0.22, -0.87, 0.27],
[-0.07, 1.04, -0.06, 0.91]],
[[ 0.88, -1.46, 0.04, 0.35],
[ 1.36, 0.64, 0.75, 0.39],
[ 0.36, 1.13, 0.83, 0.56]]]),
tensor([[[-0.47, -2.30, -0.49, -1.02, 1.74],
[ 0.71, 0.89, 0.80, -0.05, -1.35],
[-0.40, 0.26, -0.78, -1.50, -0.92]],
[[-0.77, -0.01, 1.23, 0.70, -0.66],
[ 0.28, -0.18, -0.91, 2.23, 1.14],
[-1.93, -0.17, 0.15, 0.40, 0.32]]]),
tensor([[[ 0.13, -0.02, 0.13, -0.25, -0.47, -2.30, -0.49, -1.02, 1.74],
[ 1.42, -0.22, -0.87, 0.27, 0.71, 0.89, 0.80, -0.05, -1.35],
[-0.07, 1.04, -0.06, 0.91, -0.40, 0.26, -0.78, -1.50, -0.92]],
[[ 0.88, -1.46, 0.04, 0.35, -0.77, -0.01, 1.23, 0.70, -0.66],
[ 1.36, 0.64, 0.75, 0.39, 0.28, -0.18, -0.91, 2.23, 1.14],
[ 0.36, 1.13, 0.83, 0.56, -1.93, -0.17, 0.15, 0.40, 0.32]]]))
到此这篇关于PyTorch中torch.cat()函数举例解析的文章就介绍到这了,更多相关Pytorch中torch.cat()函数内容请搜索编程网以前的文章或继续浏览下面的相关文章希望大家以后多多支持编程网!
--结束END--
本文标题: Pytorch中torch.cat()函数举例解析
本文链接: https://lsjlt.com/news/175601.html(转载时请注明来源链接)
有问题或投稿请发送至: 邮箱/279061341@qq.com QQ/279061341
2024-03-01
2024-03-01
2024-03-01
2024-02-29
2024-02-29
2024-02-29
2024-02-29
2024-02-29
2024-02-29
2024-02-29
回答
回答
回答
回答
回答
回答
回答
回答
回答
回答
0