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Apply boolean mask to tensor.
tf.compat.v2.boolean_mask(
tensor,
mask,
axis=None,
name='boolean_mask'
)
Numpy equivalent is tensor[mask]
.
# 1-D example
tensor = [0, 1, 2, 3]
mask = np.array([True, False, True, False])
boolean_mask(tensor, mask) # [0, 2]
In general, 0 < dim(mask) = K <= dim(tensor)
, and mask
's shape must match
the first K dimensions of tensor
's shape. We then have:
boolean_mask(tensor, mask)[i, j1,...,jd] = tensor[i1,...,iK,j1,...,jd]
where (i1,...,iK)
is the ith True
entry of mask
(row-major order).
The axis
could be used with mask
to indicate the axis to mask from.
In that case, axis + dim(mask) <= dim(tensor)
and mask
's shape must match
the first axis + dim(mask)
dimensions of tensor
's shape.
See also: tf.ragged.boolean_mask
, which can be applied to both dense and
ragged tensors, and can be used if you need to preserve the masked dimensions
of tensor
(rather than flattening them, as tf.boolean_mask
does).
Args:
tensor
: N-D tensor.mask
: K-D boolean tensor, K <= N and K must be known statically.axis
: A 0-D int Tensor representing the axis intensor
to mask from. By default, axis is 0 which will mask from the first dimension. Otherwise K + axis <= N.name
: A name for this operation (optional).
Returns:
(N-K+1)-dimensional tensor populated by entries in tensor
corresponding
to True
values in mask
.
Raises:
ValueError
: If shapes do not conform.
Examples:
# 2-D example
tensor = [[1, 2], [3, 4], [5, 6]]
mask = np.array([True, False, True])
boolean_mask(tensor, mask) # [[1, 2], [5, 6]]