MCPcopy
hub / github.com/WZMIAOMIAO/deep-learning-for-image-processing

github.com/WZMIAOMIAO/deep-learning-for-image-processing @v1.0 sqlite

repository ↗ · DeepWiki ↗ · release v1.0 ↗
1,676 symbols 5,435 edges 267 files 347 documented · 21%
README

深度学习在图像处理中的应用教程

前言

  • 本教程是对本人研究生期间的研究内容进行整理总结,总结的同时也希望能够帮助更多的小伙伴。后期如果有学习到新的知识也会与大家一起分享。
  • 本教程会以视频的方式进行分享,教学流程如下:
    1)介绍网络的结构与创新点
    2)使用Pytorch进行网络的搭建与训练
    3)使用Tensorflow(内部的keras模块)进行网络的搭建与训练

教程目录,点击跳转相应视频(后期会根据学习内容增加)

更多相关视频请进入我的bilibili频道查看


所需环境

  • Anaconda3(建议使用)
  • python3.6 / 3.7
  • pycharm (IDE)
  • pytorch 1.6 (pip package)
  • torchvision 0.7.0 (pip package)
  • tensorflow 2.4 (pip package)

你可能遇到的问题

如果有什么问题,也可以到我的CSDN中一起讨论。
https://blog.csdn.net/qq_37541097/article/details/103482003

我的bilibili频道: https://space.bilibili.com/18161609/channel/index

Core symbols most depended-on inside this repo

print
called by 256
pytorch_object_detection/ssd/train_utils/distributed_utils.py
to
called by 182
pytorch_object_detection/retinaNet/network_files/image_list.py
call
called by 61
tensorflow_classification/Test5_resnet/model.py
print
called by 53
pytorch_object_detection/yolov3_spp/train_utils/distributed_utils.py
print
called by 42
pytorch_object_detection/faster_rcnn/train_utils/distributed_utils.py
block
called by 37
tensorflow_classification/Test9_efficientNet/model.py
print
called by 37
pytorch_object_detection/retinaNet/train_utils/distributed_utils.py
max
called by 34
pytorch_object_detection/ssd/train_utils/distributed_utils.py

Shape

Function 737
Method 709
Class 228
Route 2

Languages

Python96%
TypeScript4%

Modules by API surface

deploying_service/deploying_pytorch/pytorch_flask_service/static/js/jquery.min.js73 symbols
pytorch_object_detection/yolov3_spp/train_utils/distributed_utils.py32 symbols
pytorch_object_detection/yolov3_spp/build_utils/layers.py31 symbols
pytorch_object_detection/train_coco_dataset/train_utils/distributed_utils.py31 symbols
pytorch_object_detection/ssd/train_utils/distributed_utils.py31 symbols
pytorch_object_detection/retinaNet/train_utils/distributed_utils.py31 symbols
pytorch_object_detection/faster_rcnn/train_utils/distributed_utils.py31 symbols
pytorch_classification/Test9_efficientNet/model.py25 symbols
pytorch_classification/Test10_regnet/model.py25 symbols
pytorch_object_detection/train_coco_dataset/network_files/rpn_function.py23 symbols
pytorch_object_detection/ssd/transforms.py23 symbols
pytorch_object_detection/faster_rcnn/network_files/rpn_function.py23 symbols

Dependencies from manifests, versioned

Flask1.1.1 · 1×
Flask_Cors3.0.9 · 1×
Pillow8.1.1 · 1×
PyYAML5.4 · 1×
lxml4.6.3 · 1×
matplotlib3.2.1 · 1×
numpy1.19.5 · 1×
opencv_python4.3.0.36 · 1×
pycocotools2.0.0 · 1×
scipy1.4.1 · 1×
tensorboard2.2.2 · 1×
torch1.6.0 · 1×

For agents

$ claude mcp add deep-learning-for-image-processing \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact