您好,登錄后才能下訂單哦!
這篇文章給大家分享的是有關Python如何實現帶GUI界面的手寫數字識別的內容。小編覺得挺實用的,因此分享給大家做個參考,一起跟隨小編過來看看吧。
有點low,輕噴
點擊選擇圖片會優先從當前目錄查找
這部分我是對MNIST數據集進行處理保存
對應代碼:
import tensorflow as tf import matplotlib.pyplot as plt import cv2 from PIL import Image import numpy as np from scipy import misc (x_train_all,y_train_all),(x_test,y_test) = tf.keras.datasets.mnist.load_data() x_valid,x_train = x_train_all[:5000],x_train_all[5000:] y_valid,y_train = y_train_all[:5000],y_train_all[5000:] print(x_valid.shape,y_valid.shape) print(x_train.shape,y_train.shape) print(x_test.shape,y_test.shape) #讀取單張圖片 def show_single_img(img_arr,len=100,path='/Users/zhangcaihui/Desktop/case/jpg/'): for i in range(len):#我這種寫法會進行覆蓋,只能保存10張照片,想保存更多的數據自己看著改 new_im = Image.fromarray(img_arr[i]) # 調用Image庫,數組歸一化 #new_im.show() #plt.imshow(img_arr) # 顯示新圖片 label=y_train[i] new_im.save(path+str(label)+'.jpg') # 保存圖片到本地 #顯示多張圖片 def show_imgs(n_rows,n_cols,x_data,y_data): assert len(x_data) == len(y_data) assert n_rows * n_cols < len(x_data) plt.figure(figsize=(n_cols*1.4,n_rows*1.6)) for row in range(n_rows): for col in range(n_cols): index = n_cols * row + col plt.subplot(n_rows,n_cols,index+1) plt.imshow(x_data[index],cmap="binary",interpolation="nearest") plt.axis("off") plt.show() #show_imgs(2,2,x_train,y_train) show_single_img(x_train)
我保存了了之前訓練好的模型,用來加載預測
關于tensorflow下訓練神經網絡模型:手把手教你,MNIST手寫數字識別
訓練好的模型model.save(path)即可
1)排版
#ui_openimage.py # -*- coding: utf-8 -*- # from PyQt5 import QtCore, QtGui, QtWidgets # from PyQt5.QtCore import Qt import sys,time from PyQt5 import QtGui, QtCore, QtWidgets from PyQt5.QtWidgets import * from PyQt5.QtCore import * from PyQt5.QtGui import * class Ui_Form(object): def setupUi(self, Form): Form.setObjectName("Form") Form.resize(1144, 750) self.label_1 = QtWidgets.QLabel(Form) self.label_1.setGeometry(QtCore.QRect(170, 130, 351, 251)) self.label_1.setObjectName("label_1") self.label_2 = QtWidgets.QLabel(Form) self.label_2.setGeometry(QtCore.QRect(680, 140, 351, 251)) self.label_2.setObjectName("label_2") self.btn_image = QtWidgets.QPushButton(Form) self.btn_image.setGeometry(QtCore.QRect(270, 560, 93, 28)) self.btn_image.setObjectName("btn_image") self.btn_recognition = QtWidgets.QPushButton(Form) self.btn_recognition.setGeometry(QtCore.QRect(680,560,93,28)) self.btn_recognition.setObjectName("bnt_recognition") #顯示時間按鈕 self.bnt_timeshow = QtWidgets.QPushButton(Form) self.bnt_timeshow.setGeometry(QtCore.QRect(900,0,200,50)) self.bnt_timeshow.setObjectName("bnt_timeshow") self.retranslateUi(Form) self.btn_image.clicked.connect(self.slot_open_image) self.btn_recognition.clicked.connect(self.slot_output_digital) self.bnt_timeshow.clicked.connect(self.buttonClicked) self.center() QtCore.QMetaObject.connectSlotsByName(Form) def retranslateUi(self, Form): #設置文本填充label、button _translate = QtCore.QCoreApplication.translate Form.setWindowTitle(_translate("Form", "數字識別系統")) self.label_1.setText(_translate("Form", "點擊下方按鈕")) self.label_1.setStyleSheet('font:50px;') self.label_2.setText(_translate("Form", "0~9")) self.label_2.setStyleSheet('font:50px;') self.btn_image.setText(_translate("Form", "選擇圖片")) self.btn_recognition.setText(_translate("From","識別結果")) self.bnt_timeshow.setText(_translate("Form","當前時間")) # 狀態條顯示時間模塊 def buttonClicked(self): # 動態顯示時間 timer = QTimer(self) timer.timeout.connect(self.showtime) timer.start() def showtime(self): datetime = QDateTime.currentDateTime() time_now = time.strftime('%Y-%m-%d %H:%M:%S', time.localtime()) #self.statusBar().showMessage(time_now) #self.bnt_timeshow.setFont(QtGui.QFont().setPointSize(100)) self.bnt_timeshow.setText(time_now) def center(self):#窗口放置中央 screen = QDesktopWidget().screenGeometry() size = self.geometry() self.move((screen.width() - size.width()) / 2, (screen.height() - size.height()) / 2) def keyPressEvent(self, e): if e.key() == Qt.Key_Escape: self.close()
2)直接運行這個文件(調用1)
#ui_main.py import random from PyQt5.QtWidgets import QFileDialog from PyQt5.QtGui import QPixmap from ui_openimage import Ui_Form import sys from PyQt5 import QtWidgets, QtGui from PyQt5.QtWidgets import QMainWindow, QTextEdit, QAction, QApplication import os,sys from PyQt5.QtCore import Qt import tensorflow from tensorflow.keras.models import load_model from tensorflow.keras.datasets import mnist from tensorflow.keras import models from tensorflow.keras import layers from tensorflow.keras.utils import to_categorical import tensorflow.keras.preprocessing.image as image import matplotlib.pyplot as plt import numpy as np import cv2 import warnings warnings.filterwarnings("ignore") class window(QtWidgets.QMainWindow,Ui_Form): def __init__(self): super(window, self).__init__() self.cwd = os.getcwd() self.setupUi(self) self.labels = self.label_1 self.img=None def slot_open_image(self): file, filetype = QFileDialog.getOpenFileName(self, '打開多個圖片', self.cwd, "*.jpg, *.png, *.JPG, *.JPEG, All Files(*)") jpg = QtGui.QPixmap(file).scaled(self.labels.width(), self.labels.height()) self.labels.setPixmap(jpg) self.img=file def slot_output_digital(self): '''path為之前保存的模型路徑''' path='/Users/zhangcaihui/PycharmProjects/py38_tf/DL_book_keras/save_the_model.h6' model= load_model(path) #防止不上傳數字照片而直接點擊識別 if self.img==None: self.label_2.setText('請上傳照片!') return img = image.load_img(self.img, target_size=(28, 28)) img = img.convert('L')#轉灰度圖像 x = image.img_to_array(img) #x = abs(255 - x) x = np.expand_dims(x, axis=0) print(x.shape) x = x / 255.0 prediction = model.predict(x) print(prediction) output = np.argmax(prediction, axis=1) print("手寫數字識別為:" + str(output[0])) self.label_2.setText(str(output[0])) if __name__ == "__main__": app = QtWidgets.QApplication(sys.argv) my = window() my.show() sys.exit(app.exec_())
界面low
只能識別單個數字
其實可以將多數字圖片進行裁剪分割,這就涉及到制作數據集了
我自己手寫的數據照片處理成28281送入網絡預測,識別結果紊亂。
反思:自己寫的數據是RGB,且一張幾KB,圖片預處理后,按28*28讀入失真太嚴重了,誰有好的方法可以聯系我!!!
其他的水果識別系統,手勢識別系統啊,改改直接套!
感謝各位的閱讀!關于“Python如何實現帶GUI界面的手寫數字識別”這篇文章就分享到這里了,希望以上內容可以對大家有一定的幫助,讓大家可以學到更多知識,如果覺得文章不錯,可以把它分享出去讓更多的人看到吧!
免責聲明:本站發布的內容(圖片、視頻和文字)以原創、轉載和分享為主,文章觀點不代表本網站立場,如果涉及侵權請聯系站長郵箱:is@yisu.com進行舉報,并提供相關證據,一經查實,將立刻刪除涉嫌侵權內容。