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fuze_task/reports/Fusion RGB MM full v1.md
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П. 1.1. Конспект по пункту 
П. 1.2. Разбор personal_package, заметки, Evidence matrix (≥8 источников)
2026-06-25 14:05:26 +00:00

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1. Резюме (Master)

Full multi-modal fusion в MERIDIAN — холистический pipeline для Triple-Teacher (DINOv3-L SAT/Web-LVD/7B, frozen, ~356M+) объединяющий 5 modalities × 2 views = 10 channels через 10 категорий fusion-парадигм. Master synthesis 4 sub-pair reviews + general fusion review.

DINOv3-L backbone (frozen):         ~356M
Per-modality adapters (×5):         ~500K (5 × 100K, light)
Multi-FiLM γ,β projections (×5):    ~50K (5 × ~10K)
KARMMA tokens (5 modalities):       ~100K (5 × 20K)
Θ-Average:                          0 (parameter-free)
─────────────────────────────────────────
Total trainable params:             ~650K (~0.2% backbone)

Master Outcomes

  1. Primary fusion mechanism: Multi-FiLM-Fusion (F43 SSF TPAMI 2024 anchor + F47 zero-init β) — <1% params overhead, INT8-compatible
  2. Secondary mechanism: ACF Condition Token (F39 CAFuser RA-L 2025) — -54% params vs separate backbones
  3. Parallel-arm research: Fusion-Mamba (F44 TMM 2025) — +5.9% mAP detection benchmark
  4. Critical ablations (F88 KARMMA):
    • Two-token missing-modality strategy
    • Θ-Average FB reduction (-81.45% memory)
    • Modality dropout 50% canonical
  5. Missing modality handling convergent evidence (4 sources): F45 + F88 + F89 + F90 → dropout p=0.5 canonical
  6. Production-ready INT8 stack confirmed (AUDIT_N6 v2: ~0-2 ms fusion overhead)

Per-Pair Contribution Summary

Pair Modality Expected R@1 gain Status
A Segmentation +2-4% (L_seg aux) Primary aux
B Depth + Normals +2-4% (geometric) Primary geometric
C CHM +0.5-1.5% (vegetation scenes) Optional niche
D Text +0.5-1% (visually-ambiguous) Secondary
Edges Edges +1-2% (with depth synergy) Supporting
Combined Full 5-modal +3-5% R@1 total Triple-Teacher

Top-5 Critical Reads (Master)

# Paper Venue Year Role
1 F43 SSF (Robust PEFT) IEEE TPAMI 2024 Multi-FiLM anchor (<1% overhead)
2 F39 CAFuser IEEE RA-L 2025 ACF canonical (-54% params)
3 F88 KARMMA arXiv 2026 3 critical ablations (two-token, Θ-Avg, dropout)
4 F44 Fusion-Mamba IEEE TMM 2025 Parallel-arm (+5.9% mAP)
5 F45 Flex-MoE NeurIPS Spotlight 2024 Missing modality bank

2. MERIDIAN Triple-Teacher Architecture

INPUT (5 modalities × 2 views = 10 channels):
┌──────────────────────────────────────────────────────────┐
│ ├── RGB sat              ┌── RGB UAV                      │
│ ├── Depth (DepthAny v2)   ├── Depth                       │
│ ├── Edges (Canny/HED)     ├── Edges                       │
│ ├── Segmentation (SAM)    ├── Segmentation                │
│ ├── CHM (Lidar/M11 ML)    ├── CHM                         │
│ └── Text caption (VLM)    └── Text caption                │
└──────────────────────────────────────────────────────────┘
                              ↓
DINOv3-L BACKBONE (frozen, ~356M+):
┌──────────────────────────────────────────────────────────┐
│ ├── DINOv3-L SAT-493M    (satellite-specialized)         │
│ ├── DINOv3-L Web-LVD     (web-scale)                     │
│ └── DINOv3-L ViT-7B      (large general)                 │
└──────────────────────────────────────────────────────────┘
                              ↓
FUSION MECHANISM (10 categories, primary: Multi-FiLM-Fusion):
┌──────────────────────────────────────────────────────────┐
│ Per-modality adapters (F39 CAFuser pattern, light):      │
│   ├── edge_adapter      (light Conv → FiLM)              │
│   ├── depth_adapter     (light Conv → FiLM)              │
│   ├── seg_adapter       (light Conv → FiLM)              │
│   ├── chm_adapter       (light Conv → FiLM)              │
│   └── text_adapter      (CLIP encoder → FiLM)            │
│                                                           │
│ Multi-FiLM-Fusion (F43 SSF pattern):                     │
│   F_fused = F_rgb                                         │
│   F_fused = film_edge(F_fused, F_edge)                    │
│   F_fused = film_depth(F_fused, F_depth)                  │
│   F_fused = film_seg(F_fused, F_seg)                      │
│   F_fused = film_chm(F_fused, F_chm)        ← when avail  │
│   F_fused = film_text(F_fused, F_text)      ← when avail  │
│                                                           │
│ Modality dropout p=0.5 (F88+F45+F89+F90 convergent):     │
│   - Two-token KARMMA для каждой modality                 │
│   - Gradual schedule (F90 sigmoid warmup)                │
│                                                           │
│ Θ-Average FB reduction (F88, -81.45% memory):            │
│   Output Teacher embedding compressed                    │
└──────────────────────────────────────────────────────────┘
                              ↓
OUTPUT: 512-dim Teacher embedding per view (+ optional 64-token queries)
                              ↓
       KD signal (E2-E primary, см. ОБЗОР_KD_detailed_v1)
                              ↓
STUDENT SOFIA v7.6 (edge, ~5M Tiny):
┌──────────────────────────────────────────────────────────┐
│ ├── Input: RGB sat + RGB UAV (always)                    │
│ ├── Backbone (Variant-A/E/Q)                              │
│ ├── Asymmetric Heads (SatHead GGeM + UAVHead CHP)         │
│ └── Optional TextFiLM caption-aware                       │
│                                                           │
│ Latency target: <50 ms Jetson Orin NX INT8              │
└──────────────────────────────────────────────────────────┘

Hybrid Pattern (Multi-FiLM + ACF combined)

MERIDIAN architecture combines:

  1. Shared backbone (F39 CAFuser pattern): DINOv3-L processes RGB primary
  2. Per-modality lightweight adapters (per F39): edge_adapter, depth_adapter, seg_adapter, chm_adapter, text_adapter
  3. Multi-FiLM modulation per stage (F43 SSF): Each modality contributes γ⊙F + β
  4. Modality dropout p=0.5 training (F88+F45 convergent)
  5. F88 KARMMA two-token для missing-modality (each modality)
  6. Θ-Average FB reduction (F88, -81.45% memory)

Critical Design Choices

Decision Rationale Source
Shared backbone + adapters -54% params vs separate F39 CAFuser
Multi-FiLM modulation <1% overhead PEFT F43 SSF TPAMI
Zero-init β identity при init Graceful warmup F47 TacFiLM
Two-token missing-modality +43% Epic-Kitchens evidence F88 KARMMA
Θ-Average FB reduction -81.45% memory parameter-free F88 KARMMA
Modality dropout p=0.5 4-source convergent F45+F88+F89+F90
Element-wise gating only INT8 compatible F44 DSSF
Cached Tensors Era No on-device modality compute F8 SegEarth-R1
Per-modality adapters light (~100K each) Param budget F43 PEFT principle

Tier-1 (immediate — E1 Teacher fusion benchmark)

  1. Multi-FiLM-Fusion (F43 + F47) — primary mechanism
  2. ACF (F39 CAFuser) Condition Token — secondary for ablation
  3. Fusion-Mamba (F44) — parallel-arm benchmark
  4. Per-modality light adapters — F39 pattern (-54% params vs separate)
  5. Modality dropout p=0.5 — canonical (4-source convergent)
  6. Θ-Average FB reduction (F88) — -81.45% memory, INT8-trivial