MMDetection provides hundreds of pre-trained detection models in Model Zoo. This note will show how to inference, which means using trained models to detect objects on images.
In MMDetection, a model is defined by a configuration file and existing model parameters are saved in a checkpoint file.
To start with, we recommend RTMDet with this configuration file and this checkpoint file. It is recommended to download the checkpoint file to checkpoints
directory.
MMDetection provides high-level Python APIs for inference on images. Here is an example of building the model and inference on given images or videos.
import cv2
import mmcv
from mmcv.transforms import Compose
from mmengine.utils import track_iter_progress
from mmdet.registry import VISUALIZERS
from mmdet.apis import init_detector, inference_detector
# Specify the path to model config and checkpoint file
config_file = 'configs/rtmdet/rtmdet_l_8xb32-300e_coco.py'
checkpoint_file = 'checkpoints/rtmdet_l_8xb32-300e_coco_20220719_112030-5a0be7c4.pth'
# Build the model from a config file and a checkpoint file
model = init_detector(config_file, checkpoint_file, device='cuda:0')
# Init visualizer
visualizer = VISUALIZERS.build(model.cfg.visualizer)
# The dataset_meta is loaded from the checkpoint and
# then pass to the model in init_detector
visualizer.dataset_meta = model.dataset_meta
# Test a single image and show the results
img = 'test.jpg' # or img = mmcv.imread(img), which will only load it once
result = inference_detector(model, img)
# Show the results
img = mmcv.imread(img)
img = mmcv.imconvert(img, 'bgr', 'rgb')
visualizer.add_datasample(
'result',
img,
data_sample=result,
draw_gt=False,
show=True)
# Test a video and show the results
# Build test pipeline
model.cfg.test_dataloader.dataset.pipeline[0].type = 'LoadImageFromNDArray'
test_pipeline = Compose(model.cfg.test_dataloader.dataset.pipeline)
# visualizer has been created in line 31 and 34, if you run this demo in one notebook,
# you need not build the visualizer again.
# Init visualizer
visualizer = VISUALIZERS.build(model.cfg.visualizer)
# The dataset_meta is loaded from the checkpoint and
# then pass to the model in init_detector
visualizer.dataset_meta = model.dataset_meta
# The interval of show (ms), 0 is block
wait_time = 1
video_reader = mmcv.VideoReader('video.mp4')
cv2.namedWindow('video', 0)
for frame in track_iter_progress(video_reader):
result = inference_detector(model, frame, test_pipeline=test_pipeline)
visualizer.add_datasample(
name='video',
image=frame,
data_sample=result,
draw_gt=False,
show=False)
frame = visualizer.get_image()
mmcv.imshow(frame, 'video', wait_time)
cv2.destroyAllWindows()
A notebook demo can be found in demo/inference_demo.ipynb.
Note: inference_detector
only supports single-image inference for now.
We also provide three demo scripts, implemented with high-level APIs and supporting functionality codes. Source codes are available here.
This script performs inference on a single image.
python demo/image_demo.py \
${IMAGE_FILE} \
${CONFIG_FILE} \
[--weights ${WEIGHTS}] \
[--device ${GPU_ID}] \
[--pred-score-thr ${SCORE_THR}]
Examples:
python demo/image_demo.py demo/demo.jpg \
configs/rtmdet/rtmdet_l_8xb32-300e_coco.py \
--weights checkpoints/rtmdet_l_8xb32-300e_coco_20220719_112030-5a0be7c4.pth \
--device cpu
This is a live demo from a webcam.
python demo/webcam_demo.py \
${CONFIG_FILE} \
${CHECKPOINT_FILE} \
[--device ${GPU_ID}] \
[--camera-id ${CAMERA-ID}] \
[--score-thr ${SCORE_THR}]
Examples:
python demo/webcam_demo.py \
configs/rtmdet/rtmdet_l_8xb32-300e_coco.py \
checkpoints/rtmdet_l_8xb32-300e_coco_20220719_112030-5a0be7c4.pth
This script performs inference on a video.
python demo/video_demo.py \
${VIDEO_FILE} \
${CONFIG_FILE} \
${CHECKPOINT_FILE} \
[--device ${GPU_ID}] \
[--score-thr ${SCORE_THR}] \
[--out ${OUT_FILE}] \
[--show] \
[--wait-time ${WAIT_TIME}]
Examples:
python demo/video_demo.py demo/demo.mp4 \
configs/rtmdet/rtmdet_l_8xb32-300e_coco.py \
checkpoints/rtmdet_l_8xb32-300e_coco_20220719_112030-5a0be7c4.pth \
--out result.mp4
This script performs inference on a video with GPU acceleration.
python demo/video_gpuaccel_demo.py \
${VIDEO_FILE} \
${CONFIG_FILE} \
${CHECKPOINT_FILE} \
[--device ${GPU_ID}] \
[--score-thr ${SCORE_THR}] \
[--nvdecode] \
[--out ${OUT_FILE}] \
[--show] \
[--wait-time ${WAIT_TIME}]
Examples:
python demo/video_gpuaccel_demo.py demo/demo.mp4 \
configs/rtmdet/rtmdet_l_8xb32-300e_coco.py \
checkpoints/rtmdet_l_8xb32-300e_coco_20220719_112030-5a0be7c4.pth \
--nvdecode --out result.mp4