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MilitaryConvoy-YOLO11L — mAP@0.5: 50.0%
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metadata
license: mit
tags:
  - ultralytics
  - yolo
  - yolo11
  - object-detection
  - military-vehicle-detection
  - convoy-detection
  - visdrone
  - aerial-detection
  - OmniSense
  - MediaSense
  - DeSense
  - ConnectiviaLabs
datasets:
  - visdrone
  - military-vehicle-recognition
pipeline_tag: object-detection
library_name: ultralytics

MilitaryConvoy-YOLO11L — Military Vehicle & Convoy Detection

Part of OmniSense / MediaSense / DeSense — Connectivia Labs' defense AI platform.

Performance

Metric Value
mAP@0.5 50.0%
mAP@0.5:0.95 30.4%
Precision 57.0%
Recall 47.7%
Architecture YOLO11L
Input size 640×640
Training date 2026-04-05

Classes (15 total)

Aerial/civilian (VisDrone): pedestrian · person · bicycle · car · van · truck · tricycle · awning-tricycle · bus · motor

Military (DeSense): military-vehicle · tank · apc · afv · artillery

Training

  • Base: YOLO11L (COCO pretrained)
  • Dataset: VisDrone2019-DET + MilitaryVehicleRecognition v7 (~9,300 images merged)
  • Epochs: 75 | Batch: 32 | Imgsz: 640 | Optimizer: AdamW + cosine LR
  • Augmentation: mosaic, mixup, copy-paste, flips, scale

Usage

from ultralytics import YOLO
model = YOLO('MuayThaiLegz/MilitaryConvoy-YOLO11L')
results = model('aerial_frame.jpg')

# Filter military classes only (indices 10-14)
mil = [b for b in results[0].boxes if int(b.cls) >= 10]
print(f'Military vehicles: {len(mil)}')

DeSense Pipeline

Camera/Satellite → MilitaryConvoy-YOLO11L → ByteTrack
→ DBSCAN convoy clustering → Stone Soup fusion → Geofence alert

OmniSense · Pillars: MediaSense · DeSense · Connectivia Labs 🔒