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SkillsApr 22, 2026·3 min de lecture

MMDetection — Open-Source Object Detection Toolbox for PyTorch

MMDetection is an open-source object detection and instance segmentation toolbox from OpenMMLab, offering 300+ pretrained models and a modular config system built on PyTorch.

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Type
Skill
Installation
Single
Confiance
Confiance : Established
Point d'entrée
MMDetection Object Detection
Commande d'installation directe
npx -y tokrepo@latest install eeb52efe-3e25-11f1-9bc6-00163e2b0d79 --target codex

À exécuter après confirmation du plan en dry-run.

Introduction

MMDetection is the detection module of the OpenMMLab ecosystem. It provides a unified framework for training and evaluating object detection, instance segmentation, and panoptic segmentation models with a config-driven workflow that makes experimenting with different architectures straightforward.

What MMDetection Does

  • Implements 50+ detection architectures: Faster R-CNN, DETR, YOLOX, Mask R-CNN, and more
  • Provides 300+ pretrained model checkpoints on COCO, VOC, and other benchmarks
  • Uses a modular config system to mix backbones, necks, heads, and losses without code changes
  • Supports distributed training on multiple GPUs and nodes out of the box
  • Integrates with MMEngine for logging, visualization, and experiment management

Architecture Overview

MMDetection follows a registry-and-config pattern. Each component (backbone, neck, head, loss, dataset) is registered by name. A Python config file specifies the full pipeline: model = dict(type='FasterRCNN', backbone=dict(type='ResNet', depth=50), ...). The Runner from MMEngine orchestrates training loops, hook execution, and checkpoint management. Data pipelines use composable transforms for augmentation and preprocessing.

Self-Hosting & Configuration

  • Install via MIM: mim install mmdet pulls compatible mmcv and mmengine versions
  • Config files live in configs/ organized by model family (e.g., configs/faster_rcnn/)
  • Override any config field from the command line: --cfg-options model.backbone.depth=101
  • Use tools/train.py for training and tools/test.py for evaluation
  • Export models to ONNX or TensorRT via tools/deployment/

Key Features

  • Broadest collection of detection model implementations in a single codebase
  • Config inheritance system reduces boilerplate — change a backbone in one line
  • Extensive benchmarks with reproducible results on standard datasets
  • Active community with regular releases tracking state-of-the-art methods
  • Seamless integration with other OpenMMLab projects (MMSegmentation, MMPose, MMTracking)

Comparison with Similar Tools

  • Detectron2 (Meta) — strong alternative with Pythonic config; MMDetection has more model variety
  • Ultralytics (YOLOv8) — focused on YOLO variants with a simpler API; MMDetection covers far more architectures
  • torchvision.models.detection — limited set of models shipping with PyTorch
  • PaddleDetection — PaddlePaddle equivalent; MMDetection is PyTorch-native
  • Hugging Face Transformers — includes some detection models but not a dedicated detection framework

FAQ

Q: Can I use a timm backbone in MMDetection? A: Yes. MMDetection supports timm backbones via mmdet.models.backbones.TIMMBackbone in the config.

Q: How do I train on a custom dataset? A: Convert your annotations to COCO JSON format, update data_root and ann_file in the config, and adjust num_classes on the head.

Q: Is MMDetection suitable for production inference? A: For production, export the model to ONNX or TensorRT using the deployment tools; the training framework itself is designed for research workflows.

Q: What is the relationship between MMDetection and MMDet3.x? A: MMDetection 3.x is the current major version built on MMEngine, replacing the older MMCV-based runner.

Sources

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