有没有专门做布料的网站,小程序云服务器多少钱,wordpress的注册文件在哪个文件夹,网站优化 情况本文是在前面两篇文章的基础上#xff0c;讲解如何更改训练数据集颜色#xff0c;需要与前面两篇文章连起来看。
本文用于修改cityscapes数据集的标签颜色与Semankitti数据集的标签一致#xff0c;对修改后的数据集进行训练。需要下载两个开发工具包和一个数据集#xff0…
本文是在前面两篇文章的基础上讲解如何更改训练数据集颜色需要与前面两篇文章连起来看。
本文用于修改cityscapes数据集的标签颜色与Semankitti数据集的标签一致对修改后的数据集进行训练。需要下载两个开发工具包和一个数据集分别是cityscapesScripts-master、semantic-kitti-api-master和cityscapes数据集
cityscapesScripts是用于检查、准备和评估 Cityscapes 数据集的脚本。下载路径
https://github.com/mcordts/cityscapesScripts cityscapes数据集需要注册登录才能下载下载链接
Login – Cityscapes Dataset 下载完成后在cityscapesScripts-master中创建一个cityscapes文件夹将下载好的两个文件分别放入其中解压出来的说明文件直接删除即可最终如下图 semantic-kitti-api是用于打开、可视化、处理和评估 SemanticKITTI 数据集中的点云和标签结果的帮助程序脚本。下载路径
https://github.com/PRBonn/semantic-kitti-api 一、制作标签步骤
1.1 更改标签颜色
进入目录cityscapesScripts-master\cityscapesscripts\helpers\labels.py中修改标签颜色与semantic-kitti-api-master\config\semanic-kitti.yaml中一致。注意semantic-kitti-api-maste中的颜色是BGR颜色cityscapesScripts中的颜色是RGB颜色颠倒一下
cityscapesScripts-master\cityscapesscripts\helpers\labels.py标签 semantic-kitti-api-master\config\semanic-kitti.yaml标签 修改后的cityscapesScripts-master\cityscapesscripts\helpers\labels.py标签可以直接拷贝使用
labels [# name id trainId category catId hasInstances ignoreInEval colorLabel( unlabeled , 0 , 255 , void , 0 , False , True , ( 0, 0, 0) ),Label( ego vehicle , 1 , 255 , void , 0 , False , True , ( 0, 0, 0) ),Label( rectification border , 2 , 255 , void , 0 , False , True , ( 0, 0, 0) ),Label( out of roi , 3 , 255 , void , 0 , False , True , ( 0, 0, 0) ),Label( static , 4 , 255 , void , 0 , False , True , ( 0, 0, 0) ),Label( dynamic , 5 , 255 , void , 0 , False , True , (111, 74, 0) ),
# Label( ground , 6 , 255 , void , 0 , False , True , ( 81, 0, 81) ),Label( ground , 6 , 255 , void , 0 , False , True , ( 175, 0, 75) ),
# Label( road , 7 , 0 , flat , 1 , False , False , (128, 64,128) ),Label( road , 7 , 0 , flat , 1 , False , False , (255, 0,255) ),
# Label( sidewalk , 8 , 1 , flat , 1 , False , False , (244, 35,232) ),Label( sidewalk , 8 , 1 , flat , 1 , False , False , (75, 0,75) ),
# Label( parking , 9 , 255 , flat , 1 , False , True , (250,170,160) ),Label( parking , 9 , 255 , flat , 1 , False , True , (255,150,255) ),
# Label( rail track , 10 , 255 , flat , 1 , False , True , (230,150,140) ),Label( rail track , 10 , 255 , flat , 1 , False , True , (0,0,255) ),
# Label( building , 11 , 2 , construction , 2 , False , False , ( 70, 70, 70) ),Label( building , 11 , 2 , construction , 2 , False , False , ( 255, 200, 0) ),
# Label( wall , 12 , 3 , construction , 2 , False , False , (102,102,156) ),Label( wall , 12 , 3 , construction , 2 , False , False , (255,150,0) ),
# Label( fence , 13 , 4 , construction , 2 , False , False , (190,153,153) ),Label( fence , 13 , 4 , construction , 2 , False , False , (255,120,50) ),
# Label( guard rail , 14 , 255 , construction , 2 , False , True , (180,165,180) ),Label( guard rail , 14 , 255 , construction , 2 , False , True , (255,150,0) ),
# Label( bridge , 15 , 255 , construction , 2 , False , True , (150,100,100) ),Label( bridge , 15 , 255 , construction , 2 , False , True , (255,150,0) ),
# Label( tunnel , 16 , 255 , construction , 2 , False , True , (150,120, 90) ),Label( tunnel , 16 , 255 , construction , 2 , False , True , (255,150, 0) ),
# Label( pole , 17 , 5 , object , 3 , False , False , (153,153,153) ),Label( pole , 17 , 5 , object , 3 , False , False , (255,240,150) ),
# Label( polegroup , 18 , 255 , object , 3 , False , True , (153,153,153) ),Label( polegroup , 18 , 255 , object , 3 , False , True , (50,255,255) ),
# Label( traffic light , 19 , 6 , object , 3 , False , False , (250,170, 30) ),Label( traffic light , 19 , 6 , object , 3 , False , False , (50,255, 255) ),
# Label( traffic sign , 20 , 7 , object , 3 , False , False , (220,220, 0) ),Label( traffic sign , 20 , 7 , object , 3 , False , False , (255,0, 0) ),
# Label( vegetation , 21 , 8 , nature , 4 , False , False , (107,142, 35) ),Label( vegetation , 21 , 8 , nature , 4 , False , False , (0,175, 0) ),
# Label( terrain , 22 , 9 , nature , 4 , False , False , (152,251,152) ),Label( terrain , 22 , 9 , nature , 4 , False , False , (150,240,80) ),
# Label( sky , 23 , 10 , sky , 5 , False , False , ( 70,130,180) ),Label( sky , 23 , 10 , sky , 5 , False , False , ( 0,0,0) ),
# Label( person , 24 , 11 , human , 6 , True , False , (220, 20, 60) ),Label( person , 24 , 11 , human , 6 , True , False , (255, 30, 30) ),
# Label( rider , 25 , 12 , human , 6 , True , False , (255, 0, 0) ),Label( rider , 25 , 12 , human , 6 , True , False , (255, 40, 200) ),
# Label( car , 26 , 13 , vehicle , 7 , True , False , ( 0, 0,142) ),Label( car , 26 , 13 , vehicle , 7 , True , False , ( 100, 150,245) ),
# Label( truck , 27 , 14 , vehicle , 7 , True , False , ( 0, 0, 70) ),Label( truck , 27 , 14 , vehicle , 7 , True , False , ( 80, 30, 180) ),
# Label( bus , 28 , 15 , vehicle , 7 , True , False , ( 0, 60,100) ),Label( bus , 28 , 15 , vehicle , 7 , True , False , ( 100, 80,250) ),
# Label( caravan , 29 , 255 , vehicle , 7 , True , True , ( 0, 0, 90) ),Label( caravan , 29 , 255 , vehicle , 7 , True , True , ( 0, 0, 255) ),
# Label( trailer , 30 , 255 , vehicle , 7 , True , True , ( 0, 0,110) ),Label( trailer , 30 , 255 , vehicle , 7 , True , True , ( 0, 0,255) ),
# Label( train , 31 , 16 , vehicle , 7 , True , False , ( 0, 80,100) ),Label( train , 31 , 16 , vehicle , 7 , True , False , ( 0, 0,255) ),
# Label( motorcycle , 32 , 17 , vehicle , 7 , True , False , ( 0, 0,230) ),Label( motorcycle , 32 , 17 , vehicle , 7 , True , False , ( 30, 60,150) ),
# Label( bicycle , 33 , 18 , vehicle , 7 , True , False , (119, 11, 32) ),Label( bicycle , 33 , 18 , vehicle , 7 , True , False , (100, 230, 245) ),
# Label( license plate , -1 , -1 , vehicle , 7 , False , True , ( 0, 0,142) ),Label( license plate , -1 , -1 , vehicle , 7 , False , True , ( 0, 0,255) ),
]
1.2 生成训练标签
1.2.1 生成labelIds标签
进入目录cityscapesScripts-master\cityscapesscripts\preparation中
运行下面代码 # 运行成功后会在cityscapes数据集中生成_labelTrainIds结尾的训练文件python .\createTrainIdLabelImgs.py 此时进入cityscapesScripts-master\cityscapes\gtFine\train中任何一个城市会发现多了一个修改好的训练标签gtFine中test、train和val中均多了一个训练标签不一一展示 2.2 生成instanceIds标签
进入目录cityscapesScripts-master\cityscapesscripts\preparation中
运行下面代码
# # 运行成功后会在cityscapes数据集中生成_instanceTrainIds结尾的训练文件
python .\createTrainIdInstanceImgs.py此时进入cityscapesScripts-master\cityscapes\gtFine\train中任何一个城市会发现多了一个另一个实例训练标签gtFine中test、train和val中均多了一个训练标签不一一展示 2.3 修改DeepLabV3Plus-Pytorch中datasets\cityscapes.py中RGB值
训练之前修改datasets\cityscapes.py文件中标签RGB值与cityscapesScripts-master中一致可直接使用 修改好的标签代码如下
CityscapesClass namedtuple(CityscapesClass, [name, id, train_id, category, category_id,has_instances, ignore_in_eval, color])classes [CityscapesClass(unlabeled, 0, 255, void, 0, False, True, (0, 0, 0)),CityscapesClass(ego vehicle, 1, 255, void, 0, False, True, (0, 0, 0)),CityscapesClass(rectification border, 2, 255, void, 0, False, True, (0, 0, 0)),CityscapesClass(out of roi, 3, 255, void, 0, False, True, (0, 0, 0)),CityscapesClass(static, 4, 255, void, 0, False, True, (0, 0, 0)),CityscapesClass(dynamic, 5, 255, void, 0, False, True, (111, 74, 0)),# CityscapesClass(ground, 6, 255, void, 0, False, True, (81, 0, 81)),CityscapesClass(ground, 6, 255, void, 0, False, True, (175, 0, 75)),# CityscapesClass(road, 7, 0, flat, 1, False, False, (128, 64, 128)),CityscapesClass(road, 7, 0, flat, 1, False, False, (255, 0, 255)),# CityscapesClass(sidewalk, 8, 1, flat, 1, False, False, (244, 35, 232)),CityscapesClass(sidewalk, 8, 1, flat, 1, False, False, (75, 0, 75)),# CityscapesClass(parking, 9, 255, flat, 1, False, True, (250, 170, 160)),CityscapesClass(parking, 9, 255, flat, 1, False, True, (255, 150, 255)),# CityscapesClass(rail track, 10, 255, flat, 1, False, True, (230, 150, 140)),CityscapesClass(rail track, 10, 255, flat, 1, False, True, (0, 0, 255)),# CityscapesClass(building, 11, 2, construction, 2, False, False, (70, 70, 70)),CityscapesClass(building, 11, 2, construction, 2, False, False, (255, 200, 0)),# CityscapesClass(wall, 12, 3, construction, 2, False, False, (102, 102, 156)),CityscapesClass(wall, 12, 3, construction, 2, False, False, (255, 150, 0)),# CityscapesClass(fence, 13, 4, construction, 2, False, False, (190, 153, 153)),CityscapesClass(fence, 13, 4, construction, 2, False, False, (255, 120, 50)),# CityscapesClass(guard rail, 14, 255, construction, 2, False, True, (180, 165, 180)),CityscapesClass(guard rail, 14, 255, construction, 2, False, True, (255, 150, 0)),# CityscapesClass(bridge, 15, 255, construction, 2, False, True, (150, 100, 100)),CityscapesClass(bridge, 15, 255, construction, 2, False, True, (255, 150, 0)),# CityscapesClass(tunnel, 16, 255, construction, 2, False, True, (150, 120, 90)),CityscapesClass(tunnel, 16, 255, construction, 2, False, True, (255, 150, 0)),# CityscapesClass(pole, 17, 5, object, 3, False, False, (153, 153, 153)),CityscapesClass(pole, 17, 5, object, 3, False, False, (255, 240, 150)),# CityscapesClass(polegroup, 18, 255, object, 3, False, True, (153, 153, 153)),CityscapesClass(polegroup, 18, 255, object, 3, False, True, (50, 255, 255)),# CityscapesClass(traffic light, 19, 6, object, 3, False, False, (250, 170, 30)),CityscapesClass(traffic light, 19, 6, object, 3, False, False, (50, 255, 255)),# CityscapesClass(traffic sign, 20, 7, object, 3, False, False, (220, 220, 0)),CityscapesClass(traffic sign, 20, 7, object, 3, False, False, (255, 0, 0)),# CityscapesClass(vegetation, 21, 8, nature, 4, False, False, (107, 142, 35)),CityscapesClass(vegetation, 21, 8, nature, 4, False, False, (0, 175, 0)),# CityscapesClass(terrain, 22, 9, nature, 4, False, False, (152, 251, 152)),CityscapesClass(terrain, 22, 9, nature, 4, False, False, (150, 240, 80)),# CityscapesClass(sky, 23, 10, sky, 5, False, False, (70, 130, 180)),CityscapesClass(sky, 23, 10, sky, 5, False, False, (0, 0, 0)),# CityscapesClass(person, 24, 11, human, 6, True, False, (220, 20, 60)),CityscapesClass(person, 24, 11, human, 6, True, False, (255, 30, 30)),# CityscapesClass(rider, 25, 12, human, 6, True, False, (255, 0, 0)),CityscapesClass(rider, 25, 12, human, 6, True, False, (255, 40, 200)),# CityscapesClass(car, 26, 13, vehicle, 7, True, False, (0, 0, 142)),CityscapesClass(car, 26, 13, vehicle, 7, True, False, (100, 150, 245)),# CityscapesClass(truck, 27, 14, vehicle, 7, True, False, (0, 0, 70)),CityscapesClass(truck, 27, 14, vehicle, 7, True, False, (80, 30, 180)),# CityscapesClass(bus, 28, 15, vehicle, 7, True, False, (0, 60, 100)),CityscapesClass(bus, 28, 15, vehicle, 7, True, False, (100, 80, 250)),# CityscapesClass(caravan, 29, 255, vehicle, 7, True, True, (0, 0, 90)),CityscapesClass(caravan, 29, 255, vehicle, 7, True, True, (0, 0, 255)),# CityscapesClass(trailer, 30, 255, vehicle, 7, True, True, (0, 0, 110)),CityscapesClass(trailer, 30, 255, vehicle, 7, True, True, (0, 0, 255)),# CityscapesClass(train, 31, 16, vehicle, 7, True, False, (0, 80, 100)),CityscapesClass(train, 31, 16, vehicle, 7, True, False, (0, 0, 255)),# CityscapesClass(motorcycle, 32, 17, vehicle, 7, True, False, (0, 0, 230)),CityscapesClass(motorcycle, 32, 17, vehicle, 7, True, False, (30, 60, 150)),# CityscapesClass(bicycle, 33, 18, vehicle, 7, True, False, (119, 11, 32)),CityscapesClass(bicycle, 33, 18, vehicle, 7, True, False, (100, 230, 245)),CityscapesClass(license plate, -1, 255, vehicle, 7, False, True, (0, 0, 255)),]
更改完成后在DeepLabV3Plus-Pytorch-master中训练即可得到训练后的新结果