yolov5_distillation.zip
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5.0
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更新日期:2024-07-27

YOLOV5知识蒸馏源码

资源文件列表(大概)

文件名
大小
yolov5_distillation/
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yolov5_distillation/.dockerignore
3.62KB
yolov5_distillation/.gitattributes
75B
yolov5_distillation/.github/
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yolov5_distillation/.github/FUNDING.yml
118B
yolov5_distillation/.github/ISSUE_TEMPLATE/
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yolov5_distillation/.github/ISSUE_TEMPLATE/bug-report.yml
2.87KB
yolov5_distillation/.github/ISSUE_TEMPLATE/config.yml
322B
yolov5_distillation/.github/ISSUE_TEMPLATE/feature-request.yml
1.76KB
yolov5_distillation/.github/ISSUE_TEMPLATE/question.yml
1.12KB
yolov5_distillation/.github/dependabot.yml
441B
yolov5_distillation/.github/workflows/
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yolov5_distillation/.github/workflows/ci-testing.yml
3.42KB
yolov5_distillation/.github/workflows/codeql-analysis.yml
2KB
yolov5_distillation/.github/workflows/greetings.yml
4.95KB
yolov5_distillation/.github/workflows/rebase.yml
639B
yolov5_distillation/.github/workflows/stale.yml
1.89KB
yolov5_distillation/.gitignore
3.88KB
yolov5_distillation/.idea/
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yolov5_distillation/.idea/.gitignore
50B
yolov5_distillation/.idea/inspectionProfiles/
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yolov5_distillation/.idea/inspectionProfiles/Project_Default.xml
2.92KB
yolov5_distillation/.idea/inspectionProfiles/profiles_settings.xml
174B
yolov5_distillation/.idea/misc.xml
199B
yolov5_distillation/.idea/modules.xml
283B
yolov5_distillation/.idea/workspace.xml
2.96KB
yolov5_distillation/.idea/yolov5_prune.iml
496B
yolov5_distillation/1.6'
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yolov5_distillation/CONTRIBUTING.md
4.87KB
yolov5_distillation/Dockerfile
1.43KB
yolov5_distillation/LICENSE
34.3KB
yolov5_distillation/README.md
7.07KB
yolov5_distillation/__pycache__/
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yolov5_distillation/__pycache__/val.cpython-38.pyc
13.22KB
yolov5_distillation/data/
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yolov5_distillation/data/Argoverse.yaml
2.7KB
yolov5_distillation/data/GlobalWheat2020.yaml
1.87KB
yolov5_distillation/data/Objects365.yaml
7.92KB
yolov5_distillation/data/SKU-110K.yaml
2.32KB
yolov5_distillation/data/VOC.yaml
3.33KB
yolov5_distillation/data/VisDrone.yaml
2.88KB
yolov5_distillation/data/coco.yaml
2.31KB
yolov5_distillation/data/coco128.yaml
1.68KB
yolov5_distillation/data/hyps/
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yolov5_distillation/data/hyps/hyp.finetune.yaml
907B
yolov5_distillation/data/hyps/hyp.finetune_objects365.yaml
460B
yolov5_distillation/data/hyps/hyp.scratch-high.yaml
1.64KB
yolov5_distillation/data/hyps/hyp.scratch-low.yaml
1.65KB
yolov5_distillation/data/hyps/hyp.scratch-med.yaml
1.65KB
yolov5_distillation/data/hyps/hyp.scratch.yaml
1.62KB
yolov5_distillation/data/images/
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yolov5_distillation/data/images/bus.jpg
476.01KB
yolov5_distillation/data/images/zidane.jpg
164.99KB
yolov5_distillation/data/scripts/
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yolov5_distillation/data/scripts/download_weights.sh
523B
yolov5_distillation/data/scripts/get_coco.sh
900B
yolov5_distillation/data/scripts/get_coco128.sh
615B
yolov5_distillation/data/xView.yaml
4.98KB
yolov5_distillation/deploy/
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yolov5_distillation/deploy/openvino/
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yolov5_distillation/deploy/openvino/eval_openvino_yolov5.py
10.27KB
yolov5_distillation/deploy/openvino/yolov5s_distill_output_pytorch_int8_simple_model.json
929B
yolov5_distillation/deploy/openvino/yolov5s_output_pytorch_int8_simple_model.json
904B
yolov5_distillation/detect.py
13.25KB
yolov5_distillation/export.py
26.25KB
yolov5_distillation/hubconf.py
6.27KB
yolov5_distillation/models/
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yolov5_distillation/models/__init__.py
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yolov5_distillation/models/__pycache__/
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yolov5_distillation/models/__pycache__/__init__.cpython-38.pyc
137B
yolov5_distillation/models/__pycache__/common.cpython-38.pyc
29.08KB
yolov5_distillation/models/__pycache__/experimental.cpython-38.pyc
4.76KB
yolov5_distillation/models/__pycache__/yolo.cpython-38.pyc
12.35KB
yolov5_distillation/models/common.py
32.09KB
yolov5_distillation/models/experimental.py
4.48KB
yolov5_distillation/models/hub/
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yolov5_distillation/models/hub/anchors.yaml
3.26KB
yolov5_distillation/models/hub/yolov3-spp.yaml
1.53KB
yolov5_distillation/models/hub/yolov3-tiny.yaml
1.2KB
yolov5_distillation/models/hub/yolov3.yaml
1.52KB
yolov5_distillation/models/hub/yolov5-bifpn.yaml
1.39KB
yolov5_distillation/models/hub/yolov5-fpn.yaml
1.19KB
yolov5_distillation/models/hub/yolov5-p2.yaml
1.65KB
yolov5_distillation/models/hub/yolov5-p34.yaml
1.32KB
yolov5_distillation/models/hub/yolov5-p6.yaml
1.7KB
yolov5_distillation/models/hub/yolov5-p7.yaml
2.07KB
yolov5_distillation/models/hub/yolov5-panet.yaml
1.37KB
yolov5_distillation/models/hub/yolov5l6.yaml
1.78KB
yolov5_distillation/models/hub/yolov5m6.yaml
1.78KB
yolov5_distillation/models/hub/yolov5n6.yaml
1.78KB
yolov5_distillation/models/hub/yolov5s-ghost.yaml
1.45KB
yolov5_distillation/models/hub/yolov5s-transformer.yaml
1.41KB
yolov5_distillation/models/hub/yolov5s6.yaml
1.78KB
yolov5_distillation/models/hub/yolov5x6.yaml
1.78KB
yolov5_distillation/models/tf.py
20.17KB
yolov5_distillation/models/yolo.py
14.61KB
yolov5_distillation/models/yolov5l.yaml
1.37KB
yolov5_distillation/models/yolov5m.yaml
1.37KB
yolov5_distillation/models/yolov5n.yaml
1.37KB
yolov5_distillation/models/yolov5s.yaml
1.37KB
yolov5_distillation/models/yolov5x.yaml
1.37KB
yolov5_distillation/requirements.txt
939B
yolov5_distillation/runs/
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yolov5_distillation/runs/train/
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yolov5_distillation/runs/train/exp/
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yolov5_distillation/runs/train/exp/events.out.tfevents.1710208916.5RKK3G3.3396.0
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yolov5_distillation/runs/train/exp/hyp.yaml
400B
yolov5_distillation/runs/train/exp/opt.yaml
625B
yolov5_distillation/runs/train/exp/weights/
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yolov5_distillation/setup.cfg
1.24KB
yolov5_distillation/train.py
32.99KB
yolov5_distillation/train_distillation.py
36.14KB
yolov5_distillation/tutorial.ipynb
55.14KB
yolov5_distillation/utils/
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yolov5_distillation/utils/__init__.py
1.11KB
yolov5_distillation/utils/__pycache__/
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yolov5_distillation/utils/__pycache__/__init__.cpython-38.pyc
1KB
yolov5_distillation/utils/__pycache__/augmentations.cpython-38.pyc
8.83KB
yolov5_distillation/utils/__pycache__/autoanchor.cpython-38.pyc
6.11KB
yolov5_distillation/utils/__pycache__/callbacks.cpython-38.pyc
2.38KB
yolov5_distillation/utils/__pycache__/datasets.cpython-38.pyc
34.93KB
yolov5_distillation/utils/__pycache__/downloads.cpython-38.pyc
3.97KB
yolov5_distillation/utils/__pycache__/general.cpython-38.pyc
30.99KB
yolov5_distillation/utils/__pycache__/loss.cpython-38.pyc
11.22KB
yolov5_distillation/utils/__pycache__/metrics.cpython-38.pyc
11KB
yolov5_distillation/utils/__pycache__/plots.cpython-38.pyc
17.91KB
yolov5_distillation/utils/__pycache__/torch_utils.cpython-38.pyc
12.52KB
yolov5_distillation/utils/activations.py
3.69KB
yolov5_distillation/utils/augmentations.py
11.46KB
yolov5_distillation/utils/autoanchor.py
7KB
yolov5_distillation/utils/autobatch.py
2.13KB
yolov5_distillation/utils/aws/
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yolov5_distillation/utils/aws/__init__.py
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yolov5_distillation/utils/aws/mime.sh
780B
yolov5_distillation/utils/aws/resume.py
1.17KB
yolov5_distillation/utils/aws/userdata.sh
1.22KB
yolov5_distillation/utils/benchmarks.py
3.72KB
yolov5_distillation/utils/callbacks.py
2.41KB
yolov5_distillation/utils/datasets.py
44.84KB
yolov5_distillation/utils/downloads.py
6.14KB
yolov5_distillation/utils/flask_rest_api/
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yolov5_distillation/utils/flask_rest_api/README.md
1.67KB
yolov5_distillation/utils/flask_rest_api/example_request.py
299B
yolov5_distillation/utils/flask_rest_api/restapi.py
1.05KB
yolov5_distillation/utils/general.py
35.64KB
yolov5_distillation/utils/google_app_engine/
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yolov5_distillation/utils/google_app_engine/Dockerfile
821B
yolov5_distillation/utils/google_app_engine/additional_requirements.txt
105B
yolov5_distillation/utils/google_app_engine/app.yaml
174B
yolov5_distillation/utils/loggers/
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yolov5_distillation/utils/loggers/__init__.py
7.45KB
yolov5_distillation/utils/loggers/__pycache__/
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yolov5_distillation/utils/loggers/__pycache__/__init__.cpython-38.pyc
7.16KB
yolov5_distillation/utils/loggers/wandb/
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yolov5_distillation/utils/loggers/wandb/README.md
10.57KB
yolov5_distillation/utils/loggers/wandb/__init__.py
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yolov5_distillation/utils/loggers/wandb/__pycache__/
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yolov5_distillation/utils/loggers/wandb/__pycache__/__init__.cpython-38.pyc
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yolov5_distillation/utils/loggers/wandb/__pycache__/wandb_utils.cpython-38.pyc
19.11KB
yolov5_distillation/utils/loggers/wandb/log_dataset.py
1.01KB
yolov5_distillation/utils/loggers/wandb/sweep.py
1.12KB
yolov5_distillation/utils/loggers/wandb/sweep.yaml
2.41KB
yolov5_distillation/utils/loggers/wandb/wandb_utils.py
26.51KB
yolov5_distillation/utils/loss.py
15.28KB
yolov5_distillation/utils/metrics.py
13.68KB
yolov5_distillation/utils/plots.py
20.04KB
yolov5_distillation/utils/torch_utils.py
13.87KB
yolov5_distillation/val.py
18.57KB

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YOLOV5知识蒸馏源码

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