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做网站答辩总结范文,网络营销常用的工具,下载软件的网址,wordpress有收益嘛一、COCO128 数据集 我们以最近大热的YOLOv8为例,回顾一下之前的安装过程: %pip install ultralytics import ultralytics ultralytics.checks()这里选择训练的数据集为:COCO128 COCO128是一个小型教程数据集,由COCOtrain2017中…

一、COCO128 数据集

我们以最近大热的YOLOv8为例,回顾一下之前的安装过程:

%pip install ultralytics
import ultralytics
ultralytics.checks()

在这里插入图片描述
这里选择训练的数据集为:COCO128

COCO128是一个小型教程数据集,由COCOtrain2017中的前128个图像组成。

在YOLO中自带的coco128.yaml文件:

1)可选的用于自动下载的下载命令/URL,

2)指向培训图像目录的路径(或指向带有培训图像列表的*.txt文件的路径),

3)与验证图像相同,

4)类数,

5)类名列表:

# download command/URL (optional)
download: https://github.com/ultralytics/yolov5/releases/download/v1.0/coco128.zip# train and val data as 1) directory: path/images/, 2) file: path/images.txt, or 3) list: [path1/images/, path2/images/]
train: ../coco128/images/train2017/
val: ../coco128/images/train2017/# number of classes
nc: 80# class names
names: ['person', 'bicycle', 'car', 'motorcycle', 'airplane', 'bus', 'train', 'truck', 'boat', 'traffic light','fire hydrant', 'stop sign', 'parking meter', 'bench', 'bird', 'cat', 'dog', 'horse', 'sheep', 'cow','elephant', 'bear', 'zebra', 'giraffe', 'backpack', 'umbrella', 'handbag', 'tie', 'suitcase', 'frisbee','skis', 'snowboard', 'sports ball', 'kite', 'baseball bat', 'baseball glove', 'skateboard', 'surfboard','tennis racket', 'bottle', 'wine glass', 'cup', 'fork', 'knife', 'spoon', 'bowl', 'banana', 'apple','sandwich', 'orange', 'broccoli', 'carrot', 'hot dog', 'pizza', 'donut', 'cake', 'chair', 'couch','potted plant', 'bed', 'dining table', 'toilet', 'tv', 'laptop', 'mouse', 'remote', 'keyboard', 'cell phone', 'microwave', 'oven', 'toaster', 'sink', 'refrigerator', 'book', 'clock', 'vase', 'scissors', 'teddy bear', 'hair drier', 'toothbrush']

二、训练过程

!yolo train model = yolov8n.pt data = coco128.yaml epochs = 10 imgsz = 640

训练过程为:

                   from  n    params  module                                       arguments                     0                  -1  1       464  ultralytics.nn.modules.conv.Conv             [3, 16, 3, 2]                 1                  -1  1      4672  ultralytics.nn.modules.conv.Conv             [16, 32, 3, 2]                2                  -1  1      7360  ultralytics.nn.modules.block.C2f             [32, 32, 1, True]             3                  -1  1     18560  ultralytics.nn.modules.conv.Conv             [32, 64, 3, 2]                4                  -1  2     49664  ultralytics.nn.modules.block.C2f             [64, 64, 2, Tr
ue]             5                  -1  1     73984  ultralytics.nn.modules.conv.Conv             [64, 128, 3, 2]               6                  -1  2    197632  ultralytics.nn.modules.block.C2f             [128, 128, 2, True]           7                  -1  1    295424  ultralytics.nn.modules.conv.Conv             [128, 256, 3, 2]              8                  -1  1    460288  ultralytics.nn.modules.block.C2f             [256, 256, 1, True]           9                  -1  1    164608  ultralytics.nn.modules.block.SPPF            [256, 256, 5]                 10                  -1  1         0  torch.nn.modules.upsampling.Upsample         [None, 2, 'nearest']          11             [-1, 6]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           12                  -1  1    148224  ultralytics.nn.modules.block.C2f             [384, 128, 1]                 13                  -1  1         0  torch.nn.modules.upsampling.Upsample         [None, 2, 'nearest']          14             [-1, 4]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           15                  -1  1     37248  ultralytics.nn.modules.block.C2f             [192, 64, 1]                  16                  -1  1     36992  ultralytics.nn.modules.conv.Conv             [64, 64, 3, 2]                17            [-1, 12]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           18                  -1  1    123648  ultralytics.nn.modules.block.C2f             [192, 128, 1]                 19                  -1  1    147712  ultralytics.nn.modules.conv.Conv             [128, 128, 3, 2]              20             [-1, 9]  1         0  ultralytics.nn.modules.conv.Concat           [1]                           21                  -1  1    493056  ultralytics.nn.modules.block.C2f             [384, 256, 1]                 22        [15, 18, 21]  1    897664  ultralytics.nn.modules.head.Detect           [80, [64, 128, 256]]          
Model summary: 225 layers, 3157200 parameters, 3157184 gradients
Transferred 355/355 items from pretrained weights
TensorBoard: Start with 'tensorboard --logdir runs/detect/train', view at http://localhost:6006/
AMP: running Automatic Mixed Precision (AMP) checks with YOLOv8n...
AMP: checks passed ✅
train: Scanning /kaggle/working/datasets/coco128/labels/train2017.cache... 126 i
albumentations: Blur(p=0.01, blur_limit=(3, 7)), MedianBlur(p=0.01, blur_limit=(3, 7)), ToGray(p=0.01), CLAHE(p=0.01, clip_limit=(1, 4.0), tile_grid_size=(8, 8))
val: Scanning /kaggle/working/datasets/coco128/labels/train2017.cache... 126 ima
Plotting labels to runs/detect/train/labels.jpg... 
optimizer: AdamW(lr=0.000119, momentum=0.9) with parameter groups 57 weight(decay=0.0), 64 weight(decay=0.0005), 63 bias(decay=0.0)
Image sizes 640 train, 640 val
Using 2 dataloader workers
Logging results to runs/detect/train
Starting training for 10 epochs...
Closing dataloader mosaic
albumentations: Blur(p=0.01, blur_limit=(3, 7)), MedianBlur(p=0.01, blur_limit=(3, 7)), ToGray(p=0.01), CLAHE(p=0.01, clip_limit=(1, 4.0), tile_grid_size=(8, 8))
      Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size1/10      2.61G      1.153      1.398      1.192         81        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.688      0.506       0.61      0.446Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size2/10      2.56G      1.142      1.345      1.202        121        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.678      0.525       0.63      0.456Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size3/10      2.57G      1.147       1.25      1.175        108        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.656      0.548       0.64      0.466Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size4/10      2.57G      1.149      1.287      1.177        116        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.684      0.568      0.654      0.482Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size5/10      2.57G      1.169      1.233      1.207         68        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.664      0.586      0.668      0.491Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size6/10      2.57G      1.139      1.231      1.177         95        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929       0.66      0.613      0.677        0.5Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size7/10      2.57G      1.134      1.211      1.181        115        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.649      0.631      0.683      0.504Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size8/10      2.57G      1.114      1.194      1.178         71        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.664      0.634       0.69      0.513Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size9/10      2.57G      1.117      1.127      1.148        142        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.624      0.671      0.697       0.52Epoch    GPU_mem   box_loss   cls_loss   dfl_loss  Instances       Size10/10      2.57G      1.085      1.133      1.172        104        640: 1Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.631      0.676      0.704      0.522
10 epochs completed in 0.018 hours.
Optimizer stripped from runs/detect/train/weights/last.pt, 6.5MB
Optimizer stripped from runs/detect/train/weights/best.pt, 6.5MBValidating runs/detect/train/weights/best.pt...
Ultralytics YOLOv8.0.128 🚀 Python-3.10.10 torch-2.0.0 CUDA:0 (Tesla P100-PCIE-16GB, 16281MiB)
Model summary (fused): 168 layers, 3151904 parameters, 0 gradients
                 Class     Images  Instances      Box(P          R      mAP50  mall        128        929      0.629      0.677      0.704      0.523person        128        254      0.763      0.721      0.778      0.569bicycle        128          6      0.765      0.333      0.391      0.321car        128         46      0.487      0.217      0.322      0.192motorcycle        128          5      0.613        0.8      0.906      0.732airplane        128          6      0.842          1      0.972      0.809bus        128          7      0.832      0.714      0.712       0.61train        128          3       0.52          1      0.995      0.858truck        128         12      0.597        0.5      0.547      0.373boat        128          6      0.526      0.167      0.448      0.328traffic light        128         14      0.471      0.214      0.184      0.145stop sign        128          2      0.671          1      0.995      0.647bench        128          9      0.675      0.695       0.72      0.489bird        128         16      0.936      0.921      0.961       0.67cat        128          4      0.818          1      0.995      0.772dog        128          9       0.68      0.889      0.908      0.722horse        128          2      0.441          1      0.828      0.497elephant        128         17      0.742      0.848      0.933       0.71bear        128          1      0.461          1      0.995      0.995zebra        128          4       0.85          1      0.995      0.972giraffe        128          9      0.824          1      0.995      0.772backpack        128          6      0.596      0.333      0.394      0.257umbrella        128         18      0.564      0.722      0.681      0.429handbag        128         19      0.635      0.185      0.326      0.178tie        128          7      0.671      0.714      0.758      0.522suitcase        128          4      0.687          1      0.945      0.603frisbee        128          5       0.52        0.8      0.799      0.689skis        128          1      0.694          1      0.995      0.497snowboard        128          7      0.499      0.714      0.732      0.589sports ball        128          6      0.747      0.494      0.573      0.342kite        128         10      0.539        0.5      0.504      0.181baseball bat        128          4      0.595        0.5      0.509      0.253baseball glove        128          7      0.808      0.429      0.431      0.318skateboard        128          5      0.493        0.6      0.609      0.465tennis racket        128          7      0.451      0.286      0.446      0.274bottle        128         18        0.4      0.389      0.365      0.257wine glass        128         16      0.597      0.557      0.675      0.366cup        128         36      0.586      0.389      0.465      0.338fork        128          6      0.582      0.167      0.306      0.234knife        128         16      0.621      0.625      0.669      0.405spoon        128         22      0.525      0.364       0.41      0.227bowl        128         28      0.657      0.714      0.719      0.584banana        128          1      0.319          1      0.497     0.0622sandwich        128          2      0.812          1      0.995      0.995orange        128          4      0.784          1      0.895      0.594broccoli        128         11      0.431      0.273      0.339       0.26carrot        128         24      0.553      0.833      0.801      0.504hot dog        128          2      0.474          1      0.995      0.946pizza        128          5      0.736          1      0.995      0.882donut        128         14      0.574          1      0.929       0.85cake        128          4      0.769          1      0.995       0.89chair        128         35      0.503      0.571      0.542      0.307couch        128          6      0.526      0.667      0.805      0.612potted plant        128         14      0.479      0.786      0.784      0.545bed        128          3      0.714          1      0.995       0.83dining table        128         13      0.451      0.615      0.552      0.437toilet        128          2          1      0.942      0.995      0.946tv        128          2      0.622          1      0.995      0.846laptop        128          3          1      0.452      0.863      0.738mouse        128          2          1          0     0.0459    0.00459remote        128          8      0.736        0.5       0.62      0.527cell phone        128          8     0.0541      0.027     0.0731      0.043microwave        128          3      0.773      0.667      0.913      0.807oven        128          5      0.442      0.483      0.433      0.336sink        128          6      0.378      0.167      0.336      0.231refrigerator        128          5      0.662      0.786      0.778      0.616book        128         29       0.47      0.336      0.402       0.23clock        128          9       0.76      0.778      0.884      0.762vase        128          2      0.428          1      0.828      0.745scissors        128          1      0.911          1      0.995      0.256teddy bear        128         21      0.551      0.667      0.805      0.515toothbrush        128          5      0.768          1      0.995       0.65
Speed: 3.4ms preprocess, 1.9ms inference, 0.0ms loss, 2.4ms postprocess per image
Results saved to runs/detect/train

三、验证过程

!yolo val model = yolov8n.pt data = coco128.yaml

输出的结果为:

                 Class     Images  Instances      Box(P          R      mAP50  mall        128        929       0.64      0.537      0.605      0.446person        128        254      0.797      0.677      0.764      0.538bicycle        128          6      0.514      0.333      0.315      0.264car        128         46      0.813      0.217      0.273      0.168motorcycle        128          5      0.687      0.887      0.898      0.685airplane        128          6       0.82      0.833      0.927      0.675bus        128          7      0.491      0.714      0.728      0.671train        128          3      0.534      0.667      0.706      0.604truck        128         12          1      0.332      0.473      0.297boat        128          6      0.226      0.167      0.316      0.134traffic light        128         14      0.734        0.2      0.202      0.139stop sign        128          2          1      0.992      0.995      0.701bench        128          9      0.839      0.582       0.62      0.365bird        128         16      0.921      0.728      0.864       0.51cat        128          4      0.875          1      0.995      0.791dog        128          9      0.603      0.889      0.785      0.585horse        128          2      0.597          1      0.995      0.518elephant        128         17      0.849      0.765        0.9      0.679bear        128          1      0.593          1      0.995      0.995zebra        128          4      0.848          1      0.995      0.965giraffe        128          9       0.72          1      0.951      0.722backpack        128          6      0.589      0.333      0.376      0.232umbrella        128         18      0.804        0.5      0.643      0.414handbag        128         19      0.424     0.0526      0.165     0.0889tie        128          7      0.804      0.714      0.674      0.476suitcase        128          4      0.635      0.883      0.745      0.534frisbee        128          5      0.675        0.8      0.759      0.688skis        128          1      0.567          1      0.995      0.497snowboard        128          7      0.742      0.714      0.747        0.5sports ball        128          6      0.716      0.433      0.485      0.278kite        128         10      0.817       0.45      0.569      0.184baseball bat        128          4      0.551       0.25      0.353      0.175baseball glove        128          7      0.624      0.429      0.429      0.293skateboard        128          5      0.846        0.6        0.6       0.41tennis racket        128          7      0.726      0.387      0.487       0.33bottle        128         18      0.448      0.389      0.376      0.208wine glass        128         16      0.743      0.362      0.584      0.333cup        128         36       0.58      0.278      0.404       0.29fork        128          6      0.527      0.167      0.246      0.184knife        128         16      0.564        0.5       0.59       0.36spoon        128         22      0.597      0.182      0.328       0.19bowl        128         28      0.648      0.643      0.618      0.491banana        128          1          0          0      0.124     0.0379sandwich        128          2      0.249        0.5      0.308      0.308orange        128          4          1       0.31      0.995      0.623broccoli        128         11      0.374      0.182      0.249      0.203carrot        128         24      0.648      0.458      0.572      0.362hot dog        128          2      0.351      0.553      0.745      0.721pizza        128          5      0.644          1      0.995      0.843donut        128         14      0.657          1       0.94      0.864cake        128          4      0.618          1      0.945      0.845chair        128         35      0.506      0.514      0.442      0.239couch        128          6      0.463        0.5      0.706      0.555potted plant        128         14       0.65      0.643      0.711      0.472bed        128          3      0.698      0.667      0.789      0.625dining table        128         13      0.432      0.615      0.485      0.366toilet        128          2      0.615        0.5      0.695      0.676tv        128          2      0.373       0.62      0.745      0.696laptop        128          3          1          0      0.451      0.361mouse        128          2          1          0     0.0625    0.00625remote        128          8      0.843        0.5      0.605      0.529cell phone        128          8          0          0     0.0549     0.0393microwave        128          3      0.435      0.667      0.806      0.718oven        128          5      0.412        0.4      0.339       0.27sink        128          6       0.35      0.167      0.182      0.129refrigerator        128          5      0.589        0.4      0.604      0.452book        128         29      0.629      0.103      0.346      0.178clock        128          9      0.788       0.83      0.875       0.74vase        128          2      0.376          1      0.828      0.795scissors        128          1          1          0      0.249     0.0746teddy bear        128         21      0.877      0.333      0.591      0.394toothbrush        128          5      0.743        0.6      0.638      0.374
Speed: 1.0ms preprocess, 8.5ms inference, 0.0ms loss, 1.6ms postprocess per image
Results saved to runs/detect/val

可视化的结果为:

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