当前位置: 首页 > news >正文

卷积神经网络-奥特曼识别

 数据集 

 四种奥特曼图片_数据集-飞桨AI Studio星河社区 (baidu.com)

 中间的隐藏层 已经使用参数的空间

Conv2D卷积层

ReLU激活层

MaxPool2D最大池化层

AdaptiveAvgPool2D自适应的平均池化

Linear全链接层

Dropout放置过拟合,随机丢弃神经元

--------------------------------------------------------------------------------Layer (type)          Input Shape          Output Shape         Param #    
================================================================================Conv2D-1        [[50, 3, 227, 227]]   [50, 64, 227, 227]       1,792     ReLU-1        [[50, 64, 227, 227]]   [50, 64, 227, 227]         0       Conv2D-2       [[50, 64, 227, 227]]   [50, 64, 227, 227]      36,928     ReLU-2        [[50, 64, 227, 227]]   [50, 64, 227, 227]         0       MaxPool2D-1     [[50, 64, 227, 227]]   [50, 64, 113, 113]         0       Conv2D-3       [[50, 64, 113, 113]]  [50, 128, 113, 113]      73,856     ReLU-3        [[50, 128, 113, 113]] [50, 128, 113, 113]         0       Conv2D-4       [[50, 128, 113, 113]] [50, 128, 113, 113]      147,584    ReLU-4        [[50, 128, 113, 113]] [50, 128, 113, 113]         0       MaxPool2D-2     [[50, 128, 113, 113]]  [50, 128, 56, 56]          0       Conv2D-5        [[50, 128, 56, 56]]   [50, 256, 56, 56]       295,168    ReLU-5         [[50, 256, 56, 56]]   [50, 256, 56, 56]          0       Conv2D-6        [[50, 256, 56, 56]]   [50, 256, 56, 56]       590,080    ReLU-6         [[50, 256, 56, 56]]   [50, 256, 56, 56]          0       Conv2D-7        [[50, 256, 56, 56]]   [50, 256, 56, 56]       590,080    ReLU-7         [[50, 256, 56, 56]]   [50, 256, 56, 56]          0       MaxPool2D-3      [[50, 256, 56, 56]]   [50, 256, 28, 28]          0       Conv2D-8        [[50, 256, 28, 28]]   [50, 512, 28, 28]      1,180,160   ReLU-8         [[50, 512, 28, 28]]   [50, 512, 28, 28]          0       Conv2D-9        [[50, 512, 28, 28]]   [50, 512, 28, 28]      2,359,808   ReLU-9         [[50, 512, 28, 28]]   [50, 512, 28, 28]          0       Conv2D-10       [[50, 512, 28, 28]]   [50, 512, 28, 28]      2,359,808   ReLU-10        [[50, 512, 28, 28]]   [50, 512, 28, 28]          0       MaxPool2D-4      [[50, 512, 28, 28]]   [50, 512, 14, 14]          0       Conv2D-11       [[50, 512, 14, 14]]   [50, 512, 14, 14]      2,359,808   ReLU-11        [[50, 512, 14, 14]]   [50, 512, 14, 14]          0       Conv2D-12       [[50, 512, 14, 14]]   [50, 512, 14, 14]      2,359,808   ReLU-12        [[50, 512, 14, 14]]   [50, 512, 14, 14]          0       Conv2D-13       [[50, 512, 14, 14]]   [50, 512, 14, 14]      2,359,808   ReLU-13        [[50, 512, 14, 14]]   [50, 512, 14, 14]          0       MaxPool2D-5      [[50, 512, 14, 14]]    [50, 512, 7, 7]           0       
AdaptiveAvgPool2D-1   [[50, 512, 7, 7]]     [50, 512, 7, 7]           0       Linear-1           [[50, 25088]]          [50, 4096]        102,764,544  ReLU-14           [[50, 4096]]           [50, 4096]             0       Dropout-1          [[50, 4096]]           [50, 4096]             0       Linear-2           [[50, 4096]]           [50, 4096]        16,781,312   ReLU-15           [[50, 4096]]           [50, 4096]             0       Dropout-2          [[50, 4096]]           [50, 4096]             0       Linear-3           [[50, 4096]]            [50, 4]            16,388     
================================================================================
Total params: 134,276,932
Trainable params: 134,276,932
Non-trainable params: 0
--------------------------------------------------------------------------------
Input size (MB): 29.49
Forward/backward pass size (MB): 11120.24
Params size (MB): 512.23
Estimated Total Size (MB): 11661.95
--------------------------------------------------------------------------------

如果paddle还没配置的话建议去网上搜一下,这里就不给链接了 

 用于训练模型的代码

import paddle
from paddle.io import Dataset,DataLoader
import os
from PIL import Image
import numpy as np
import paddle.vision.transforms as T
import matplotlib.pyplot as plt
from paddle.vision.datasets import DatasetFoldertransforms=T.Compose([T.Resize([227,227]),T.RandomRotation(degrees=[-10,10]),T.ColorJitter(0.4,0.4,0.4,0.4),T.ToTensor()])
dataset=DatasetFolder("aoteman",extensions=[".jpg"],transform=transforms)
#使用paddle.io.random_split切分训练集和测试集
from paddle.io import random_split
train_size=int(0.8*len(dataset))
test_size=len(dataset)-train_size
train_dataset,test_dataset=random_split(dataset=dataset,lengths=[train_size,test_size])
print(len(train_dataset),len(test_dataset))# plt.figure(figsize=[3,3])
# for idx,data in enumerate(train_dataset):
#     plt.subplot(3,3,idx+1)
#     im=data[0];label=data[1]
#     im=im.reshape([224,224,3])
#     plt.imshow(im)
#     if idx+1>=9:
#         break
# plt.show()print(dataset.class_to_idx)net=paddle.vision.models.vgg16(pretrained=True, num_classes=4)
paddle.summary(net,(50,3,227,227))#网络配置
lr=0.001
batch_size=50
#预训练模型优化器 Adam优化器
opt =paddle.optimizer.Adam(learning_rate=lr,parameters=net.classifier.parameters())
#损失函数
loss_fn=paddle.nn.CrossEntropyLoss()
#训练模式
net.train()
model=paddle.Model(net)
model.prepare(optimizer=opt,loss=loss_fn,metrics=paddle.metric.Accuracy())
import time
vsdl=paddle.callbacks.VisualDL(log_dir='vsdl/trainlog'+str(time.time()))
# model.load('mymodel/vgg_aoteman')
# res=model.predict()
model.fit(train_data=train_dataset,eval_data=test_dataset, batch_size=batch_size,epochs=1, verbose=1,shuffle=True,callbacks=vsdl)
model.save('mymodel/vgg_aoteman')

用于预测模型的代码

import mathimport paddle
import paddle.vision.transforms as Tfrom PIL import Image
from paddle.vision.datasets import DatasetFolder
import numpy as nptransforms = T.Compose([T.Resize([227, 227]), T.ToTensor()])
# 使用paddle.io.random_split切分训练集和测试集img = Image.open('aoteman/predict_demo.jpg')#输入图片
img.show()
img = transforms(img)
img = img.unsqueeze(0)start_index = 0  # 开始切片的索引
end_index = 3    # 结束切片的索引
axes = [1]       # 要切片的轴(通道轴)
img = paddle.slice(img, axes=axes, starts=[start_index], ends=[end_index])net = paddle.vision.models.vgg16(pretrained=True, num_classes=4)
# 网络配置
lr = 0.001
batch_size = 50
# 预训练模型优化器 Adam优化器
opt = paddle.optimizer.Adam(learning_rate=lr, parameters=net.classifier.parameters())
# 损失函数
loss_fn = paddle.nn.CrossEntropyLoss()
# 训练模式
net.train()
model = paddle.Model(net)
model.prepare(optimizer=opt, loss=loss_fn, metrics=paddle.metric.Accuracy())
import timevsdl = paddle.callbacks.VisualDL(log_dir='vsdl/trainlog' + str(time.time()))
model.load('mymodel/vgg_aoteman')# print(img)
res = model.predict_batch(img)sum=0
maxx=-1000000
idx=0
for i in range(4):# sum+=math.exp(res[0][0][i])if res[0][0][i]>maxx:maxx=res[0][0][i]idx=i# print(res[0][0][i])
# print(res)
# print(math.exp(res[0][0][idx])/sum*100,end='%:   ')
if idx==0:print("迪迦")
elif idx==1:print('杰克')
elif idx==2:print('赛文')
else:print('泰罗')

http://www.lryc.cn/news/359679.html

相关文章:

  • VB.net进行CAD二次开发(四)
  • 3步轻松月入过万,APP广告新模式大揭秘!
  • java项目之智能家居系统源码(springboot+vue+mysql)
  • 前端 JS 经典:读取文件原始内容
  • 汇编概论和实践
  • 铁塔基站用能监控能效解决方案
  • keepalived安装文档
  • Spring Security
  • vue中大屏可视化适配所有屏幕大小
  • AI大模型探索之路-实战篇12: 构建互动式Agent智能数据分析平台:实现多轮对话控制
  • 深入理解文件系统和日志分析
  • vue+vant移动端显示table表格加横向滚动条
  • webserver服务器从零搭建到上线(八)|EpollPoller事件分发器类
  • SD-WAN:企业网络转型的必然趋势
  • 构建高效稳定的短视频直播系统架构
  • python分别保存聚类分析结果+KeyError: ‘CustomerID‘报错
  • Sui与Atoma合作为开发者提供AI支持
  • go-gin中session实现redis前缀和db库选择+单点登录
  • python-双胞胎字符串
  • 万字长文,小白新手怎么开始做YOLO实验,从零开始教!整体思路在这里,科研指南针!
  • MDR-1A用什么前端:深度解析与实用指南
  • 01Linux以及操作系统概述
  • 华为OD刷题C卷 - 每日刷题 1
  • 基于ELK的日志管理【开发实践】
  • 音视频开发—音频相关概念:数模转换、PCM数据与WAV文件详解
  • Elasticsearch 8.1官网文档梳理 - 十三、Search your data(数据搜索)
  • 笔墨挥毫如游龙 最是经典铁线篆——记著名书法家王子彬
  • 智慧校园有哪些特征
  • day25回溯算法part02| 216.组合总和III 17.电话号码的字母组合
  • AWS联网和内容分发服务