Computer_Vision/Chapter10/Human_pose_detection.ipynb
2024-02-13 03:34:51 +01:00

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{
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"metadata": {
"colab": {
"name": "Human_pose_detection (1).ipynb",
"provenance": [],
"include_colab_link": true
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"kernelspec": {
"name": "python3",
"display_name": "Python 3"
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"cells": [
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"source": [
"<a href=\"https://colab.research.google.com/github/PacktPublishing/Hands-On-Computer-Vision-with-PyTorch/blob/master/Chapter10/Human_pose_detection.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
]
},
{
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"metadata": {
"id": "yuYzbvaxcOAc",
"outputId": "330c8b9d-a172-4495-9202-c27cd70aea6d",
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"height": 1000
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"source": [
"!pip install detectron2 -f \\\n",
" https://dl.fbaipublicfiles.com/detectron2/wheels/cu101/torch1.7/index.html\n",
"!pip install torch_snippets\n",
"!pip install pyyaml==5.1 pycocotools>=2.0.1\n",
"\n",
"from torch_snippets import *\n",
"import detectron2\n",
"from detectron2.utils.logger import setup_logger\n",
"setup_logger()\n",
"\n",
"from detectron2 import model_zoo\n",
"from detectron2.engine import DefaultPredictor\n",
"from detectron2.config import get_cfg\n",
"from detectron2.utils.visualizer import Visualizer\n",
"from detectron2.data import MetadataCatalog, DatasetCatalog"
],
"execution_count": null,
"outputs": [
{
"output_type": "stream",
"text": [
"Looking in links: https://dl.fbaipublicfiles.com/detectron2/wheels/cu101/torch1.7/index.html\n",
"Collecting detectron2\n",
"\u001b[?25l Downloading https://dl.fbaipublicfiles.com/detectron2/wheels/cu101/torch1.7/detectron2-0.3%2Bcu101-cp36-cp36m-linux_x86_64.whl (6.8MB)\n",
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" Downloading https://files.pythonhosted.org/packages/38/4f/fe9a4d472aa867878ce3bb7efb16654c5d63672b86dc0e6e953a67018433/yacs-0.1.8-py3-none-any.whl\n",
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"Collecting fvcore>=0.1.2\n",
" Downloading https://files.pythonhosted.org/packages/e7/37/82dc217199c10288f3d05f50f342cb270ff2630841734bdfa40b54b0f8bc/fvcore-0.1.2.post20201104.tar.gz\n",
"Collecting Pillow>=7.1\n",
"\u001b[?25l Downloading https://files.pythonhosted.org/packages/5f/19/d4c25111d36163698396f93c363114cf1cddbacb24744f6612f25b6aa3d0/Pillow-8.0.1-cp36-cp36m-manylinux1_x86_64.whl (2.2MB)\n",
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" Downloading https://files.pythonhosted.org/packages/89/a6/3814b7107e0788040870e8825eebf214d72166adf656ba7d4bf14759a06a/portalocker-2.0.0-py2.py3-none-any.whl\n",
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"Requirement already satisfied: oauthlib>=3.0.0 in /usr/local/lib/python3.6/dist-packages (from requests-oauthlib>=0.7.0->google-auth-oauthlib<0.5,>=0.4.1->tensorboard->detectron2) (3.1.0)\n",
"Building wheels for collected packages: fvcore\n",
" Building wheel for fvcore (setup.py) ... \u001b[?25l\u001b[?25hdone\n",
" Created wheel for fvcore: filename=fvcore-0.1.2.post20201104-cp36-none-any.whl size=44419 sha256=06335ffaf55471d20ec699273d3053e2c2632bb9995e2a3350bb05e92fafc314\n",
" Stored in directory: /root/.cache/pip/wheels/ec/4d/40/4077356fe02ef345791713eabede5ed63afe7d613b016694d1\n",
"Successfully built fvcore\n",
"\u001b[31mERROR: albumentations 0.1.12 has requirement imgaug<0.2.7,>=0.2.5, but you'll have imgaug 0.2.9 which is incompatible.\u001b[0m\n",
"\u001b[31mERROR: fvcore 0.1.2.post20201104 has requirement pyyaml>=5.1, but you'll have pyyaml 3.13 which is incompatible.\u001b[0m\n",
"Installing collected packages: yacs, portalocker, Pillow, fvcore, detectron2\n",
" Found existing installation: Pillow 7.0.0\n",
" Uninstalling Pillow-7.0.0:\n",
" Successfully uninstalled Pillow-7.0.0\n",
"Successfully installed Pillow-8.0.1 detectron2-0.3+cu101 fvcore-0.1.2.post20201104 portalocker-2.0.0 yacs-0.1.8\n"
],
"name": "stdout"
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{
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"metadata": {
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"output_type": "stream",
"text": [
"Collecting torch_snippets\n",
" Downloading https://files.pythonhosted.org/packages/e5/57/7d513a66ffc00d1495c8a8eeac8754b42233d8a68aa565077db8939b0452/torch_snippets-0.235-py3-none-any.whl\n",
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"Collecting opencv-python-headless\n",
"\u001b[?25l Downloading https://files.pythonhosted.org/packages/08/e9/57d869561389884136be65a2d1bc038fe50171e2ba348fda269a4aab8032/opencv_python_headless-4.4.0.46-cp36-cp36m-manylinux2014_x86_64.whl (36.7MB)\n",
"\u001b[K |████████████████████████████████| 36.7MB 72kB/s \n",
"\u001b[?25hCollecting loguru\n",
"\u001b[?25l Downloading https://files.pythonhosted.org/packages/6d/48/0a7d5847e3de329f1d0134baf707b689700b53bd3066a5a8cfd94b3c9fc8/loguru-0.5.3-py3-none-any.whl (57kB)\n",
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" Downloading https://files.pythonhosted.org/packages/db/c1/7a723e8d988de0a2e623927396e54b6831b68cb80dce468c945b849a9385/aiocontextvars-0.2.2-py2.py3-none-any.whl\n",
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" Downloading https://files.pythonhosted.org/packages/83/96/55b82d9f13763be9d672622e1b8106c85acb83edd7cc2fa5bc67cd9877e9/contextvars-2.4.tar.gz\n",
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"\u001b[?25l Downloading https://files.pythonhosted.org/packages/99/e0/ea6fd4697120327d26773b5a84853f897a68e33d3f9376b00a8ff96e4f63/immutables-0.14-cp36-cp36m-manylinux1_x86_64.whl (98kB)\n",
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"Installing collected packages: opencv-python-headless, immutables, contextvars, aiocontextvars, loguru, torch-snippets\n",
"Successfully installed aiocontextvars-0.2.2 contextvars-2.4 immutables-0.14 loguru-0.5.3 opencv-python-headless-4.4.0.46 torch-snippets-0.235\n"
],
"name": "stdout"
}
]
},
{
"cell_type": "code",
"metadata": {
"id": "Joo_heUFch-4"
},
"source": [
"cfg = get_cfg() # get a fresh new config\n",
"cfg.merge_from_file(model_zoo.get_config_file(\"COCO-Keypoints/keypoint_rcnn_R_50_FPN_3x.yaml\"))"
],
"execution_count": null,
"outputs": []
},
{
"cell_type": "code",
"metadata": {
"id": "eBBgf18kcsfR",
"outputId": "4f769583-bf9f-4d16-bed0-239da5cd7a6c",
"colab": {
"base_uri": "https://localhost:8080/"
}
},
"source": [
"cfg.MODEL.ROI_HEADS.SCORE_THRESH_TEST = 0.5 # set threshold for this model\n",
"cfg.MODEL.WEIGHTS = model_zoo.get_checkpoint_url(\"COCO-Keypoints/keypoint_rcnn_R_50_FPN_3x.yaml\")\n",
"predictor = DefaultPredictor(cfg)"
],
"execution_count": null,
"outputs": [
{
"output_type": "stream",
"text": [
"model_final_a6e10b.pkl: 237MB [00:15, 15.3MB/s] \n"
],
"name": "stderr"
}
]
},
{
"cell_type": "code",
"metadata": {
"id": "wxteXWiOcvYe"
},
"source": [
"from torch_snippets import read, resize\n",
"!wget -q https://i.imgur.com/ldzGSHk.jpg -O image.png\n",
"im = read('image.png',1)\n",
"im = resize(im, 0.5) # resize image to half its dimensions"
],
"execution_count": null,
"outputs": []
},
{
"cell_type": "code",
"metadata": {
"id": "Ax7fY1fmcygb",
"outputId": "6c4df0a8-29f6-474d-d3e3-8ec437d6664a",
"colab": {
"base_uri": "https://localhost:8080/",
"height": 371
}
},
"source": [
"outputs = predictor(im)\n",
"v = Visualizer(im[:,:,::-1], MetadataCatalog.get(cfg.DATASETS.TRAIN[0]), scale=1.2)\n",
"out = v.draw_instance_predictions(outputs[\"instances\"].to(\"cpu\"))\n",
"import matplotlib.pyplot as plt\n",
"%matplotlib inline\n",
"plt.imshow(out.get_image())"
],
"execution_count": null,
"outputs": [
{
"output_type": "stream",
"text": [
"/usr/local/lib/python3.6/dist-packages/detectron2/modeling/roi_heads/fast_rcnn.py:124: UserWarning: This overload of nonzero is deprecated:\n",
"\tnonzero()\n",
"Consider using one of the following signatures instead:\n",
"\tnonzero(*, bool as_tuple) (Triggered internally at /pytorch/torch/csrc/utils/python_arg_parser.cpp:882.)\n",
" filter_inds = filter_mask.nonzero()\n"
],
"name": "stderr"
},
{
"output_type": "execute_result",
"data": {
"text/plain": [
"<matplotlib.image.AxesImage at 0x7f92619d1f60>"
]
},
"metadata": {
"tags": []
},
"execution_count": 5
},
{
"output_type": "display_data",
"data": {
"image/png": 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\n",
"text/plain": [
"<Figure size 432x288 with 1 Axes>"
]
},
"metadata": {
"tags": [],
"needs_background": "light"
}
}
]
},
{
"cell_type": "code",
"metadata": {
"id": "R2PHSHCOc3RT"
},
"source": [
""
],
"execution_count": null,
"outputs": []
}
]
}