Benchmark and Model Zoo

Mirror sites

We use AWS as the main site to host our model zoo, and maintain a mirror on aliyun. You can replace https://s3.ap-northeast-2.amazonaws.com/open-mmlab with https://open-mmlab.oss-cn-beijing.aliyuncs.com in model urls.

Common settings

  • All models were trained on coco_2017_train, and tested on the coco_2017_val.
  • We use distributed training.
  • All pytorch-style pretrained backbones on ImageNet are from PyTorch model zoo, caffe-style pretrained backbones are converted from the newly released model from detectron2.
  • For fair comparison with other codebases, we report the GPU memory as the maximum value of torch.cuda.max_memory_allocated() for all 8 GPUs. Note that this value is usually less than what nvidia-smi shows.
  • We report the inference time as the total time of network forwarding and post-processing, excluding the data loading time. Results are obtained with the script benchmark.py which computes the average time on 2000 images.

Baselines

RPN

Please refer to RPN for details.

Faster R-CNN

Please refer to Faster R-CNN for details.

Mask R-CNN

Please refer to Mask R-CNN for details.

Fast R-CNN (with pre-computed proposals)

Please refer to Fast R-CNN for details.

RetinaNet

Please refer to RetinaNet for details.

Cascade R-CNN and Cascade Mask R-CNN

Please refer to Cascade R-CNN for details.

Hybrid Task Cascade (HTC)

Please refer to HTC for details.

SSD

Please refer to SSD for details.

Group Normalization (GN)

Please refer to Group Normalization for details.

Weight Standardization

Please refer to Weight Standardization for details.

Deformable Convolution v2

Please refer to Deformable Convolutional Networks for details.

CARAFE: Content-Aware ReAssembly of FEatures

Please refer to CARAFE for details.

Instaboost

Please refer to Instaboost for details.

Libra R-CNN

Please refer to Libra R-CNN for details.

Guided Anchoring

Please refer to Guided Anchoring for details.

FCOS

Please refer to FCOS for details.

FoveaBox

Please refer to FoveaBox for details.

RepPoints

Please refer to RepPoints for details.

FreeAnchor

Please refer to FreeAnchor for details.

Grid R-CNN (plus)

Please refer to Grid R-CNN for details.

GHM

Please refer to GHM for details.

GCNet

Please refer to GCNet for details.

HRNet

Please refer to HRNet for details.

Mask Scoring R-CNN

Please refer to Mask Scoring R-CNN for details.

Train from Scratch

Please refer to Rethinking ImageNet Pre-training for details.

NAS-FPN

Please refer to NAS-FPN for details.

ATSS

Please refer to ATSS for details.

FSAF

Please refer to FSAF for details.

RegNetX

Please refer to RegNet for details.

Res2Net

Please refer to Res2Net for details.

GRoIE

Please refer to GRoIE for details.

Dynamic R-CNN

Please refer to Dynamic R-CNN for details.

PointRend

Please refer to PointRend for details.

DetectoRS

Please refer to DetectoRS for details.

Generalized Focal Loss

Please refer to Generalized Focal Loss for details.

Other datasets

We also benchmark some methods on PASCAL VOC, Cityscapes and WIDER FACE.

Pre-trained Models

We also train Faster R-CNN and Mask R-CNN using ResNet-50 and RegNetX-3.2G with multi-scale training and longer schedules. These models serve as strong pre-trained models for downstream tasks for convenience.

Speed benchmark

We compare the training speed of Mask R-CNN with some other popular frameworks (The data is copied from detectron2). For mmdetection, we benchmark with mask_rcnn_r50_caffe_fpn_poly_1x_coco_v1.py, which should have the same setting with mask_rcnn_R_50_FPN_noaug_1x.yaml of detectron2. We also provide the checkpoint and training log for reference. The throughput is computed as the average throughput in iterations 100-500 to skip GPU warmup time.

Implementation Throughput (img/s)
Detectron2 62
MMDetection 61
maskrcnn-benchmark 53
tensorpack 50
simpledet 39
Detectron 19
matterport/Mask_RCNN 14

Comparison with Detectron2

We compare mmdetection with Detectron2 in terms of speed and performance. We use the commit id 185c27e(30/4/2020) of detectron. For fair comparison, we install and run both frameworks on the same machine.

Hardware

  • 8 NVIDIA Tesla V100 (32G) GPUs
  • Intel(R) Xeon(R) Gold 6148 CPU @ 2.40GHz

Software environment

  • Python 3.7
  • PyTorch 1.4
  • CUDA 10.1
  • CUDNN 7.6.03
  • NCCL 2.4.08

Performance

Type Lr schd Detectron2 mmdetection Download
Faster R-CNN 1x 37.9 38.0 model | log
Mask R-CNN 1x 38.6 & 35.2 38.8 & 35.4 model | log
Retinanet 1x 36.5 37.0 model | log

Training Speed

The training speed is measure with s/iter. The lower, the better.

Type Detectron2 mmdetection
Faster R-CNN 0.210 0.216
Mask R-CNN 0.261 0.265
Retinanet 0.200 0.205

Inference Speed

The inference speed is measured with fps (img/s) on a single GPU, the higher, the better. To be consistent with Detectron2, we report the pure inference speed (without the time of data loading). For Mask R-CNN, we exclude the time of RLE encoding in post-processing. We also include the officially reported speed in the parentheses, which is slightly higher than the results tested on our server due to differences of hardwares.

Type Detectron2 mmdetection
Faster R-CNN 25.6 (26.3) 22.2
Mask R-CNN 22.5 (23.3) 19.6
Retinanet 17.8 (18.2) 20.6

Training memory

Type Detectron2 mmdetection
Faster R-CNN 3.0 3.8
Mask R-CNN 3.4 3.9
Retinanet 3.9 3.4