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"""Beamformer module.""" |
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from typing import Sequence, Tuple, Union |
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import torch |
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from packaging.version import parse as V |
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from torch_complex import functional as FC |
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from torch_complex.tensor import ComplexTensor |
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EPS = torch.finfo(torch.double).eps |
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is_torch_1_8_plus = V(torch.__version__) >= V("1.8.0") |
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is_torch_1_9_plus = V(torch.__version__) >= V("1.9.0") |
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def new_complex_like( |
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ref: Union[torch.Tensor, ComplexTensor], |
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real_imag: Tuple[torch.Tensor, torch.Tensor], |
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): |
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if isinstance(ref, ComplexTensor): |
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return ComplexTensor(*real_imag) |
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elif is_torch_complex_tensor(ref): |
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return torch.complex(*real_imag) |
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else: |
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raise ValueError( |
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"Please update your PyTorch version to 1.9+ for complex support." |
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) |
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def is_torch_complex_tensor(c): |
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return ( |
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not isinstance(c, ComplexTensor) and is_torch_1_9_plus and torch.is_complex(c) |
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) |
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def is_complex(c): |
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return isinstance(c, ComplexTensor) or is_torch_complex_tensor(c) |
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def to_double(c): |
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if not isinstance(c, ComplexTensor) and is_torch_1_9_plus and torch.is_complex(c): |
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return c.to(dtype=torch.complex128) |
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else: |
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return c.double() |
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def to_float(c): |
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if not isinstance(c, ComplexTensor) and is_torch_1_9_plus and torch.is_complex(c): |
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return c.to(dtype=torch.complex64) |
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else: |
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return c.float() |
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def cat(seq: Sequence[Union[ComplexTensor, torch.Tensor]], *args, **kwargs): |
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if not isinstance(seq, (list, tuple)): |
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raise TypeError( |
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"cat(): argument 'tensors' (position 1) must be tuple of Tensors, " |
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"not Tensor" |
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) |
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if isinstance(seq[0], ComplexTensor): |
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return FC.cat(seq, *args, **kwargs) |
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else: |
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return torch.cat(seq, *args, **kwargs) |
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def complex_norm( |
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c: Union[torch.Tensor, ComplexTensor], dim=-1, keepdim=False |
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) -> torch.Tensor: |
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if not is_complex(c): |
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raise TypeError("Input is not a complex tensor.") |
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if is_torch_complex_tensor(c): |
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return torch.norm(c, dim=dim, keepdim=keepdim) |
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else: |
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if dim is None: |
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return torch.sqrt((c.real**2 + c.imag**2).sum() + EPS) |
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else: |
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return torch.sqrt( |
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(c.real**2 + c.imag**2).sum(dim=dim, keepdim=keepdim) + EPS |
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) |
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def einsum(equation, *operands): |
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if len(operands) == 1: |
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if isinstance(operands[0], (tuple, list)): |
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operands = operands[0] |
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complex_module = FC if isinstance(operands[0], ComplexTensor) else torch |
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return complex_module.einsum(equation, *operands) |
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elif len(operands) != 2: |
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op0 = operands[0] |
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same_type = all(op.dtype == op0.dtype for op in operands[1:]) |
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if same_type: |
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_einsum = FC.einsum if isinstance(op0, ComplexTensor) else torch.einsum |
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return _einsum(equation, *operands) |
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else: |
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raise ValueError("0 or More than 2 operands are not supported.") |
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a, b = operands |
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if isinstance(a, ComplexTensor) or isinstance(b, ComplexTensor): |
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return FC.einsum(equation, a, b) |
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elif is_torch_1_9_plus and (torch.is_complex(a) or torch.is_complex(b)): |
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if not torch.is_complex(a): |
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o_real = torch.einsum(equation, a, b.real) |
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o_imag = torch.einsum(equation, a, b.imag) |
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return torch.complex(o_real, o_imag) |
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elif not torch.is_complex(b): |
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o_real = torch.einsum(equation, a.real, b) |
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o_imag = torch.einsum(equation, a.imag, b) |
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return torch.complex(o_real, o_imag) |
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else: |
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return torch.einsum(equation, a, b) |
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else: |
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return torch.einsum(equation, a, b) |
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def inverse( |
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c: Union[torch.Tensor, ComplexTensor] |
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) -> Union[torch.Tensor, ComplexTensor]: |
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if isinstance(c, ComplexTensor): |
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return c.inverse2() |
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else: |
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return c.inverse() |
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def matmul( |
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a: Union[torch.Tensor, ComplexTensor], b: Union[torch.Tensor, ComplexTensor] |
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) -> Union[torch.Tensor, ComplexTensor]: |
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if isinstance(a, ComplexTensor) or isinstance(b, ComplexTensor): |
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return FC.matmul(a, b) |
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elif is_torch_1_9_plus and (torch.is_complex(a) or torch.is_complex(b)): |
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if not torch.is_complex(a): |
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o_real = torch.matmul(a, b.real) |
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o_imag = torch.matmul(a, b.imag) |
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return torch.complex(o_real, o_imag) |
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elif not torch.is_complex(b): |
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o_real = torch.matmul(a.real, b) |
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o_imag = torch.matmul(a.imag, b) |
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return torch.complex(o_real, o_imag) |
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else: |
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return torch.matmul(a, b) |
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else: |
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return torch.matmul(a, b) |
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def trace(a: Union[torch.Tensor, ComplexTensor]): |
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return FC.trace(a) |
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def reverse(a: Union[torch.Tensor, ComplexTensor], dim=0): |
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if isinstance(a, ComplexTensor): |
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return FC.reverse(a, dim=dim) |
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else: |
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return torch.flip(a, dims=(dim,)) |
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def solve(b: Union[torch.Tensor, ComplexTensor], a: Union[torch.Tensor, ComplexTensor]): |
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"""Solve the linear equation ax = b.""" |
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if isinstance(a, ComplexTensor) or isinstance(b, ComplexTensor): |
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if isinstance(a, ComplexTensor) and isinstance(b, ComplexTensor): |
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return FC.solve(b, a, return_LU=False) |
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else: |
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return matmul(inverse(a), b) |
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elif is_torch_1_9_plus and (torch.is_complex(a) or torch.is_complex(b)): |
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if torch.is_complex(a) and torch.is_complex(b): |
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return torch.linalg.solve(a, b) |
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else: |
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return matmul(inverse(a), b) |
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else: |
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if is_torch_1_8_plus: |
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return torch.linalg.solve(a, b) |
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else: |
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return torch.solve(b, a)[0] |
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def stack(seq: Sequence[Union[ComplexTensor, torch.Tensor]], *args, **kwargs): |
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if not isinstance(seq, (list, tuple)): |
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raise TypeError( |
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"stack(): argument 'tensors' (position 1) must be tuple of Tensors, " |
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"not Tensor" |
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) |
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if isinstance(seq[0], ComplexTensor): |
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return FC.stack(seq, *args, **kwargs) |
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else: |
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return torch.stack(seq, *args, **kwargs) |