belka_gate_fusions: add gate-variants for CVGL exp.

This commit is contained in:
pikaliov
2026-05-15 16:30:11 +03:00
parent c6fcd2222c
commit e2fd16e66c

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@@ -46,6 +46,7 @@ class ProjectionHead(nn.Module):
def forward(self, x: torch.Tensor) -> torch.Tensor:
return F.normalize(self.proj(x), dim=-1)
#! GATE-FUSION ORIG ---------------------------------
@gin.configurable
class GatedFusion(nn.Module):
@@ -82,6 +83,120 @@ class GatedFusion(nn.Module):
return torch.sigmoid(self.alpha).item()
#! GATE-FUSIONS MODIFICATIONS ---------------------------------
#! in_dim = 1024
from enum import Enum
class ResidualGateType(Enum):
simple_residual_one_gate = 0,
cross_gate = 1,
gate_sum = 2,
alpha_res_cat = 3,
alpha_res_sum = 4
# TODO: add GatedFusionresidual class to gin
@gin.configurable
class GatedFusionresidual(nn.Module):
"""Learnable gated fusion of image and text embeddings.
V1 - Simple residual gating with 1 common gate:
V2 - Cross residual gating with 2 cross-gates
V3 - Gate + Simple Sum of feats x & y
V4 - Alpha-weighted residual concat (per sample)
V5 - Alpha-weighted residual sum (per sample)
"""
def __init__(self, init_gate: float = 0.7, in_dim = 1024, baseline_mode: bool = False) -> None:
super().__init__()
# alpha is in logit space: sigmoid(alpha) = init_gate
init_alpha = torch.log(torch.tensor(init_gate / (1.0 - init_gate)))
self.alpha = nn.Parameter(init_alpha)
# alphas for separated cases
init_alpha_img_cross_gate = torch.log(torch.tensor(init_gate / (1.0 - init_gate)))
init_alpha_text_cross_gate = torch.log(torch.tensor(init_gate / (1.0 - init_gate)))
self.alpha_img = nn.Parameter(init_alpha_img_cross_gate)
self.alpha_text = nn.Parameter(init_alpha_text_cross_gate)
# weight for sum and cat residual
self.final_cat_residual_proj = nn.Linear(in_dim * 2, in_dim)
self.weight_net_for_sum = nn.Linear(in_dim, 1)
self.weight_net_for_cat = nn.Linear(in_dim * 2, 1)
self.baseline_mode = baseline_mode
def FuseSRGF(self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
gate = torch.sigmoid(self.alpha)
img_res = img_feat * gate + img_feat
text_res = text_feat * (1 - gate) + text_feat
fused_vec = img_res + text_res
return fused_vec
def FuseRCGF(self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
gate_img = torch.sigmoid(self.alpha_img)
gate_text = torch.sigmoid(self.alpha_text)
z_img = img_feat + gate_text * img_feat
z_text = text_feat + gate_img * text_feat
fused_vec = z_img + z_text
return fused_vec
def FuseGSUM(self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
gate = torch.sigmoid(self.alpha)
fuzed_vec = img_feat + text_feat + gate * img_feat + (1.0 - gate) * text_feat
return fuzed_vec
def FuseARGFSum(
self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
gate = torch.sigmoid(self.alpha)
residual = img_feat + text_feat
res_weight = torch.sigmoid(self.weight_net_for_sum(residual))
fuzed_vec = gate * img_feat + (1.0 - gate) * text_feat + res_weight * residual
return fuzed_vec
def FuseARGFCat(
self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
gate = torch.sigmoid(self.alpha)
cat_vec = torch.cat([img_feat, text_feat], dim=-1)
residual = self.final_cat_residual_proj(cat_vec)
res_weight = torch.sigmoid(self.weight_net_for_cat(cat_vec))
fuzed_vec = gate * img_feat + (1.0 - gate) * text_feat + res_weight * residual
return fuzed_vec
def forward(
self,
img_feat: torch.Tensor,
text_feat: torch.Tensor | None,
) -> torch.Tensor:
if text_feat is None or self.baseline_mode:
return img_feat
gate = torch.sigmoid(self.alpha)
# TODO: switch forwards here
return gate * img_feat + (1.0 - gate) * text_feat
@gin.configurable
class DualEncoderCaptionTest(nn.Module):
"""GeoRSCLIP dual encoder with gated text fusion on query branch.