【人工智能项目】sg2im文字转图像:
本次主要对github上的sg2im源码进行执行训练,得到结果。
1.从github上下载源码
!git clone https://github.com/google/sg2im.git
Cloning into 'sg2im'...
remote: Enumerating objects: 85, done.[K
remote: Total 85 (delta 0), reused 0 (delta 0), pack-reused 85[K
Unpacking objects: 100% (85/85), done.
! cp -r sg2im/sg2im sg2im/scripts/
!pip install -r sg2im/requirements.txt
Collecting cloudpickle==0.5.3
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Requirement already satisfied: cycler==0.10.0 in /usr/local/lib/python3.6/dist-packages (from -r sg2im/requirements.txt (line 2)) (0.10.0)
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[?25hRequirement already satisfied: setuptools in /usr/local/lib/python3.6/dist-packages (from kiwisolver==1.0.1->-r sg2im/requirements.txt (line 8)) (47.1.1)
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[31mERROR: gym 0.17.2 has requirement cloudpickle<1.4.0,>=1.2.0, but you'll have cloudpickle 0.5.3 which is incompatible.[0m
[31mERROR: google-colab 1.0.0 has requirement six~=1.12.0, but you'll have six 1.11.0 which is incompatible.[0m
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[31mERROR: fbprophet 0.6 has requirement python-dateutil>=2.8.0, but you'll have python-dateutil 2.7.3 which is incompatible.[0m
[31mERROR: fastai 1.0.61 has requirement numpy>=1.15, but you'll have numpy 1.14.4 which is incompatible.[0m
[31mERROR: fastai 1.0.61 has requirement torch>=1.0.0, but you'll have torch 0.4.0 which is incompatible.[0m
[31mERROR: distributed 1.25.3 has requirement dask>=0.18.0, but you'll have dask 0.17.5 which is incompatible.[0m
[31mERROR: datascience 0.10.6 has requirement folium==0.2.1, but you'll have folium 0.8.3 which is incompatible.[0m
[31mERROR: cvxpy 1.0.31 has requirement numpy>=1.15, but you'll have numpy 1.14.4 which is incompatible.[0m
[31mERROR: blis 0.4.1 has requirement numpy>=1.15.0, but you'll have numpy 1.14.4 which is incompatible.[0m
[31mERROR: astropy 4.0.1.post1 has requirement numpy>=1.16, but you'll have numpy 1.14.4 which is incompatible.[0m
[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.[0m
Installing collected packages: cloudpickle, Cython, dask, decorator, six, numpy, h5py, Pillow, imageio, kiwisolver, python-dateutil, pytz, pyparsing, matplotlib, networkx, PyWavelets, scipy, scikit-image, toolz, torch, torchvision
Found existing installation: cloudpickle 1.3.0
Uninstalling cloudpickle-1.3.0:
Successfully uninstalled cloudpickle-1.3.0
Found existing installation: Cython 0.29.19
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Uninstalling dask-2.12.0:
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Found existing installation: h5py 2.10.0
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Uninstalling Pillow-7.0.0:
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Found existing installation: pytz 2018.9
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Uninstalling networkx-2.4:
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Uninstalling PyWavelets-1.1.1:
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Found existing installation: scipy 1.4.1
Uninstalling scipy-1.4.1:
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Uninstalling scikit-image-0.16.2:
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Uninstalling toolz-0.10.0:
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Found existing installation: torch 1.5.0+cu101
Uninstalling torch-1.5.0+cu101:
Successfully uninstalled torch-1.5.0+cu101
Found existing installation: torchvision 0.6.0+cu101
Uninstalling torchvision-0.6.0+cu101:
Successfully uninstalled torchvision-0.6.0+cu101
Successfully installed Cython-0.28.3 Pillow-5.1.0 PyWavelets-0.5.2 cloudpickle-0.5.3 dask-0.17.5 decorator-4.3.0 h5py-2.8.0 imageio-2.3.0 kiwisolver-1.0.1 matplotlib-2.2.2 networkx-2.1 numpy-1.14.4 pyparsing-2.2.0 python-dateutil-2.7.3 pytz-2018.4 scikit-image-0.14.0 scipy-1.1.0 six-1.11.0 toolz-0.9.0 torch-0.4.0 torchvision-0.2.1
!bash sg2im/scripts/download_models.sh
--2020-06-05 08:11:22-- https://storage.googleapis.com/sg2im-data/small/coco64.pt
Resolving storage.googleapis.com (storage.googleapis.com)... 173.194.79.128, 2a00:1450:4013:c05::80
Connecting to storage.googleapis.com (storage.googleapis.com)|173.194.79.128|:443... connected.
HTTP request sent, awaiting response... 200 OK
Length: 119806264 (114M) [application/octet-stream]
Saving to: ‘sg2im-models/coco64.pt'sg2im-models/coco64 100%[===================>] 114.26M 38.5MB/s in 3.0s
2020-06-05 08:11:25 (38.5 MB/s) - ‘sg2im-models/coco64.pt' saved [119806264/119806264]
--2020-06-05 08:11:25-- https://storage.googleapis.com/sg2im-data/small/vg64.pt
Resolving storage.googleapis.com (storage.googleapis.com)... 108.177.119.128, 2a00:1450:4013:c00::80
Connecting to storage.googleapis.com (storage.googleapis.com)|108.177.119.128|:443... connected.
HTTP request sent, awaiting response... 200 OK
Length: 119873465 (114M) [application/octet-stream]
Saving to: ‘sg2im-models/vg64.pt'sg2im-models/vg64.p 100%[===================>] 114.32M 44.0MB/s in 2.6s
2020-06-05 08:11:29 (44.0 MB/s) - ‘sg2im-models/vg64.pt' saved [119873465/119873465]
--2020-06-05 08:11:29-- https://storage.googleapis.com/sg2im-data/small/vg128.pt
Resolving storage.googleapis.com (storage.googleapis.com)... 74.125.128.128, 2a00:1450:4013:c02::80
Connecting to storage.googleapis.com (storage.googleapis.com)|74.125.128.128|:443... connected.
HTTP request sent, awaiting response... 200 OK
Length: 129319241 (123M) [application/octet-stream]
Saving to: ‘sg2im-models/vg128.pt'sg2im-models/vg128. 100%[===================>] 123.33M 54.2MB/s in 2.3s
2020-06-05 08:11:32 (54.2 MB/s) - ‘sg2im-models/vg128.pt' saved [129319241/129319241]
2.训练与结果展示
!python3 sg2im/scripts/run_model.py --checkpoint sg2im-models/vg128.pt --scene_graphs sg2im/scene_graphs/figure_6_sheep.json --output_dir outputs
import matplotlib.pyplot as plt import cv2 %matplotlib inline img0 = cv2.imread("outputs/img000000.png") img1 = cv2.imread("outputs/img000001.png") img2 = cv2.imread("outputs/img000002.png") img3 = cv2.imread("outputs/img000003.png") img4 = cv2.imread("outputs/img000004.png") img5 = cv2.imread("outputs/img000005.png") img6 = cv2.imread("outputs/img000006.png") plt.figure() plt.subplot(3,3,1) plt.imshow(img0) plt.subplot(3,3,2) plt.imshow(img1) plt.subplot(3,3,3) plt.imshow(img2) plt.subplot(3,3,4) plt.imshow(img3) plt.subplot(3,3,5) plt.imshow(img4) plt.subplot(3,3,6) plt.imshow(img5) plt.subplot(3,3,7) plt.imshow(img6)
<matplotlib.image.AxesImage at 0x7fa2bdfb36d8>
!python3 sg2im/scripts/run_model.py --checkpoint sg2im-models/vg128.pt --scene_graphs sg2im/scene_graphs/figure_6_street.json --output_dir outputs
import matplotlib.pyplot as plt import cv2 %matplotlib inline img0 = cv2.imread("outputs/img000000.png") img1 = cv2.imread("outputs/img000001.png") img2 = cv2.imread("outputs/img000002.png") img3 = cv2.imread("outputs/img000003.png") img4 = cv2.imread("outputs/img000004.png") img5 = cv2.imread("outputs/img000005.png") img6 = cv2.imread("outputs/img000006.png") plt.figure() plt.subplot(3,3,1) plt.imshow(img0) plt.subplot(3,3,2) plt.imshow(img1) plt.subplot(3,3,3) plt.imshow(img2) plt.subplot(3,3,4) plt.imshow(img3) plt.subplot(3,3,5) plt.imshow(img4) plt.subplot(3,3,6) plt.imshow(img5) plt.subplot(3,3,7) plt.imshow(img6)
<matplotlib.image.AxesImage at 0x7fa2be14d1d0>
!python3 sg2im/scripts/run_model.py --checkpoint sg2im-models/vg128.pt --scene_graphs sg2im/scene_graphs/figure_5_vg.json --output_dir outputs
import matplotlib.pyplot as plt import cv2 %matplotlib inline img0 = cv2.imread("outputs/img000000.png") img1 = cv2.imread("outputs/img000001.png") img2 = cv2.imread("outputs/img000002.png") img3 = cv2.imread("outputs/img000003.png") img4 = cv2.imread("outputs/img000004.png") img5 = cv2.imread("outputs/img000005.png") img6 = cv2.imread("outputs/img000006.png") img7 = cv2.imread("outputs/img000007.png") plt.figure() plt.subplot(3,3,1) plt.imshow(img0) plt.subplot(3,3,2) plt.imshow(img1) plt.subplot(3,3,3) plt.imshow(img2) plt.subplot(3,3,4) plt.imshow(img3) plt.subplot(3,3,5) plt.imshow(img4) plt.subplot(3,3,6) plt.imshow(img5) plt.subplot(3,3,7) plt.imshow(img6) plt.subplot(3,3,8) plt.imshow(img7)
<matplotlib.image.AxesImage at 0x7fa2bdd710f0>
小结
瓷们 ,点赞收藏评论走起来!
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原文链接:https://blog.csdn.net/Mind_programmonkey/article/details/121101730