Remove projections (1024 native), add satellite text, dual GatedFusion
Architecture changes: - Removed proj_drone/proj_sat (1024→512): retrieval space is now DINOv3 native 1024-dim, no information loss from projection - TextFusionMLP: 2304→1024→1024 (was 2304→768→512), shared between branches - Gallery branch now uses satellite captions (L1/L2/L3) via shared TextFusionMLP - Two separate GatedFusion gates: α_q (query) and α_g (gallery) - For sat images without captions (~57%): gate passes image features through Dataset changes: - GTAUAVDataset now loads satellite captions from caption index - collate_gtauav_batch includes sat_caption_l1/l2/l3 Training loop: - Passes satellite captions to model forward - Logs both gate_q and gate_g values 11.1M trainable / 734M total (1.51%) Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
This commit is contained in:
@@ -208,20 +208,19 @@ class DINOv3ViT(nn.Module):
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class TextFusionMLP(nn.Module):
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"""Fuse L1/L2/L3 text embeddings via concat + MLP.
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[B, 3*text_dim] -> [B, proj_dim]
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[B, 3*text_dim] -> [B, out_dim]
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"""
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def __init__(
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self,
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text_dim: int = 768,
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hidden_dim: int = 768,
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proj_dim: int = 512,
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out_dim: int = 1024,
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) -> None:
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super().__init__()
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self.mlp = nn.Sequential(
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nn.Linear(3 * text_dim, hidden_dim),
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nn.Linear(3 * text_dim, out_dim),
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nn.GELU(),
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nn.Linear(hidden_dim, proj_dim),
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nn.Linear(out_dim, out_dim),
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)
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def forward(
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@@ -238,7 +237,7 @@ class TextFusionMLP(nn.Module):
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z_l3: L3 fingerprint [B, text_dim].
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Returns:
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Fused text embedding [B, proj_dim].
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Fused text embedding [B, out_dim].
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"""
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cat = torch.cat([z_l1, z_l2, z_l3], dim=-1)
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return self.mlp(cat)
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@@ -249,18 +248,24 @@ class TextFusionMLP(nn.Module):
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# ---------------------------------------------------------------------------
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class AsymmetricEncoder(nn.Module):
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"""Asymmetric dual encoder for CVGL with text fusion.
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"""Asymmetric dual encoder for CVGL with text fusion on both branches.
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Query branch: DINOv3 LVD (drone) + LRSCLIP (L1/L2/L3) -> GatedFusion -> query
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Gallery branch: DINOv3 SAT (satellite) -> gallery
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Query branch: DINOv3 LVD (drone) + text(L1/L2/L3) -> GatedFusion_q -> query [1024]
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Gallery branch: DINOv3 SAT (sat) + text(L1/L2/L3) -> GatedFusion_g -> gallery [1024]
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No projection layers — retrieval space is DINOv3 native 1024-dim.
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Text fusion MLP is shared between branches (same caption format).
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Two separate GatedFusion gates (drone/sat may weight text differently).
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For satellite images without captions, GatedFusion passes image features through
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(text_feat=None → gate acts as identity).
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Args:
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dino_web_path: Path to DINOv3 LVD checkpoint (drone encoder).
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dino_sat_path: Path to DINOv3 SAT checkpoint (satellite encoder).
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lrsclip_path: Path to DGTRS-CLIP checkpoint (text encoder).
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proj_dim: Shared projection dimension.
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init_gate: Initial fusion gate (image weight).
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baseline_mode: If True, gate = 1.0 (text ignored).
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baseline_mode: If True, gate = 1.0 (text ignored), DGTRS not loaded.
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device: Torch device string.
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"""
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@@ -272,13 +277,12 @@ class AsymmetricEncoder(nn.Module):
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dino_web_path: str = "nn_models/DINO_WEB/dinov3-vitl16-pretrain-lvd1689m.pth",
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dino_sat_path: str = "nn_models/DINO_SAT/model.safetensors",
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lrsclip_path: str = "nn_models/LRSCLIP/DGTRS-CLIP-ViT-L-14.pt",
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proj_dim: int = 512,
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init_gate: float = 0.7,
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baseline_mode: bool = False,
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device: str = "cuda",
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) -> None:
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super().__init__()
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self.proj_dim = proj_dim
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self.embed_dim = self.DINO_DIM
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self.baseline_mode = baseline_mode
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self.device = device
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@@ -296,24 +300,16 @@ class AsymmetricEncoder(nn.Module):
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else:
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self.text_encoder = None
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# Projection heads.
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self.proj_drone = ProjectionHead(
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in_dim=self.DINO_DIM, out_dim=proj_dim, use_mlp=False,
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)
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self.proj_sat = ProjectionHead(
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in_dim=self.DINO_DIM, out_dim=proj_dim, use_mlp=False,
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)
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# Text fusion (L1/L2/L3 -> proj_dim).
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# Shared text fusion MLP: 3×768 -> 1024 (same format for drone & sat captions).
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if not baseline_mode:
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self.text_fusion = TextFusionMLP(
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text_dim=self.TEXT_DIM,
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hidden_dim=self.TEXT_DIM,
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proj_dim=proj_dim,
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out_dim=self.DINO_DIM,
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)
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# Gated fusion.
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self.fusion = GatedFusion(init_gate=init_gate, baseline_mode=baseline_mode)
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# Separate gated fusion for query and gallery branches.
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self.fusion_query = GatedFusion(init_gate=init_gate, baseline_mode=baseline_mode)
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self.fusion_gallery = GatedFusion(init_gate=init_gate, baseline_mode=baseline_mode)
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@staticmethod
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def _freeze(module: nn.Module) -> None:
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@@ -354,8 +350,17 @@ class AsymmetricEncoder(nn.Module):
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l1_texts: list[str],
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l2_texts: list[str],
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l3_texts: list[str],
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) -> torch.Tensor:
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"""Encode L1/L2/L3 captions and fuse. Returns [B, proj_dim]."""
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) -> torch.Tensor | None:
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"""Encode L1/L2/L3 captions and fuse. Returns [B, 1024] or None.
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Returns None if all captions are empty (no text available).
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For mixed batches (some have captions, some don't), encodes all
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and lets GatedFusion handle per-sample gating.
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"""
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# Check if any caption is non-empty.
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if all(t == "" for t in l1_texts):
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return None
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z_l1 = self._encode_single_text(l1_texts)
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z_l2 = self._encode_single_text(l2_texts)
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z_l3 = self._encode_single_text(l3_texts)
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@@ -374,45 +379,49 @@ class AsymmetricEncoder(nn.Module):
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caption_l1: list[str] | None = None,
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caption_l2: list[str] | None = None,
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caption_l3: list[str] | None = None,
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sat_caption_l1: list[str] | None = None,
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sat_caption_l2: list[str] | None = None,
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sat_caption_l3: list[str] | None = None,
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) -> dict[str, torch.Tensor]:
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"""Forward pass.
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Args:
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drone_img: Drone images [B, 3, 256, 256].
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sat_img: Satellite images [B, 3, 256, 256].
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caption_l1: L1 overview captions.
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caption_l2: L2 full description captions.
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caption_l3: L3 fingerprint captions.
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caption_l1/l2/l3: Drone L1/L2/L3 captions.
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sat_caption_l1/l2/l3: Satellite L1/L2/L3 captions.
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Returns:
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Dict with 'query' [B, proj_dim], 'gallery' [B, proj_dim], 'gate'.
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Dict with 'query' [B, 1024], 'gallery' [B, 1024],
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'gate_q', 'gate_g'.
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"""
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# Gallery: satellite only.
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sat_feat = self.encode_satellite(sat_img)
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gallery = self.proj_sat(sat_feat)
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# Query: drone + optional text.
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# Image features (frozen DINOv3).
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drone_feat = self.encode_drone(drone_img)
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drone_proj = self.proj_drone(drone_feat)
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sat_feat = self.encode_satellite(sat_img)
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text_proj = None
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has_text = (
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caption_l1 is not None
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and caption_l2 is not None
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and caption_l3 is not None
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and not self.baseline_mode
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)
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if has_text:
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text_proj = self.encode_text_levels(caption_l1, caption_l2, caption_l3)
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# Query branch: drone + drone text.
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drone_text = None
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if (caption_l1 is not None and caption_l2 is not None
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and caption_l3 is not None and not self.baseline_mode):
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drone_text = self.encode_text_levels(caption_l1, caption_l2, caption_l3)
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query = self.fusion(drone_proj, text_proj)
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# Re-normalize after fusion.
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query = self.fusion_query(drone_feat, drone_text)
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query = F.normalize(query, dim=-1)
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# Gallery branch: satellite + satellite text.
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sat_text = None
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if (sat_caption_l1 is not None and sat_caption_l2 is not None
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and sat_caption_l3 is not None and not self.baseline_mode):
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sat_text = self.encode_text_levels(sat_caption_l1, sat_caption_l2, sat_caption_l3)
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gallery = self.fusion_gallery(sat_feat, sat_text)
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gallery = F.normalize(gallery, dim=-1)
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return {
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"query": query,
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"gallery": gallery,
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"gate": self.fusion.gate_value,
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"gate_q": self.fusion_query.gate_value,
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"gate_g": self.fusion_gallery.gate_value,
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}
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def trainable_parameters(self) -> list[nn.Parameter]:
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@@ -425,7 +434,6 @@ class AsymmetricEncoder(nn.Module):
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path.parent.mkdir(parents=True, exist_ok=True)
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ckpt = {
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"model_state": self.state_dict(),
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"proj_dim": self.proj_dim,
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"baseline_mode": self.baseline_mode,
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**extra,
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}
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@@ -460,7 +468,6 @@ class AsymmetricEncoder(nn.Module):
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dino_web_path=dino_web_path,
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dino_sat_path=dino_sat_path,
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lrsclip_path=lrsclip_path,
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proj_dim=ckpt.get("proj_dim", 512),
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baseline_mode=ckpt.get("baseline_mode", False),
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device=device,
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)
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