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10 changes: 8 additions & 2 deletions monai/losses/image_dissimilarity.py
Original file line number Diff line number Diff line change
Expand Up @@ -233,9 +233,15 @@ def __init__(
self.kernel_type = look_up_option(kernel_type, ["gaussian", "b-spline"])
self.num_bins = num_bins
self.kernel_type = kernel_type
# declared as buffers so they move with the module (e.g. ``.to(device)``); only populated for the
# gaussian kernel, hence the ``Tensor`` annotation reflects the type at the use sites in that path.
self.preterm: torch.Tensor
self.bin_centers: torch.Tensor
self.register_buffer("preterm", None, persistent=False)
self.register_buffer("bin_centers", None, persistent=False)
if self.kernel_type == "gaussian":
self.preterm = 1 / (2 * sigma**2)
self.bin_centers = bin_centers[None, None, ...]
self.register_buffer("preterm", 1 / (2 * sigma**2), persistent=False)
self.register_buffer("bin_centers", bin_centers[None, None, ...], persistent=False)
self.smooth_nr = float(smooth_nr)
self.smooth_dr = float(smooth_dr)

Expand Down
Original file line number Diff line number Diff line change
Expand Up @@ -145,5 +145,51 @@ def test_ill_opts(self, num_bins, reduction, expected_exception, expected_messag
GlobalMutualInformationLoss(num_bins=num_bins, reduction=reduction)(pred, target)


class TestGlobalMutualInformationLossBuffers(unittest.TestCase):
def test_gaussian_kernel_registers_buffers(self):
"""Verify gaussian kernel registers preterm and bin_centers as non-trainable, non-persistent buffers."""
loss = GlobalMutualInformationLoss(kernel_type="gaussian")
self.assertIn("preterm", loss._buffers)
self.assertIn("bin_centers", loss._buffers)
self.assertFalse(loss.preterm.requires_grad)
self.assertFalse(loss.bin_centers.requires_grad)
self.assertEqual(loss.bin_centers.ndim, 3)
state = loss.state_dict()
self.assertNotIn("preterm", state)
self.assertNotIn("bin_centers", state)

def test_bspline_kernel_has_no_gaussian_buffers(self):
"""Verify b-spline kernel does not populate gaussian-specific buffers."""
loss = GlobalMutualInformationLoss(kernel_type="b-spline")
self.assertIsNone(loss.preterm)
self.assertIsNone(loss.bin_centers)
state = loss.state_dict()
self.assertNotIn("preterm", state)
self.assertNotIn("bin_centers", state)

def test_gaussian_kernel_forward_correct(self):
"""Verify gaussian kernel forward pass returns a scalar loss tensor."""
pred = torch.rand(2, 1, 8, 8, dtype=torch.float32)
target = torch.rand(2, 1, 8, 8, dtype=torch.float32)
loss = GlobalMutualInformationLoss(kernel_type="gaussian")
result = loss(pred, target)
self.assertEqual(result.shape, torch.Size([]))

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def test_gaussian_buffers_move_with_module(self):
"""Verify preterm and bin_centers buffers move to the target device with the module."""
loss = GlobalMutualInformationLoss(kernel_type="gaussian")
self.assertEqual(loss.preterm.device.type, "cpu")
self.assertEqual(loss.bin_centers.device.type, "cpu")
if not torch.cuda.is_available():
self.skipTest("CUDA not available")
loss = loss.cuda()
self.assertEqual(loss.preterm.device.type, "cuda")
self.assertEqual(loss.bin_centers.device.type, "cuda")
pred = torch.rand(2, 1, 8, 8, device="cuda")
target = torch.rand(2, 1, 8, 8, device="cuda")
result = loss(pred, target)
self.assertEqual(result.device.type, "cuda")


if __name__ == "__main__":
unittest.main()
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