python 图像插值 最近邻、双线性、双三次实例
最近邻:
import cv2 import numpy as np def function(img): height,width,channels =img.shape emptyImage=np.zeros((2048,2048,channels),np.uint8) sh=2048/height sw=2048/width for i in range(2048): for j in range(2048): x=int(i/sh) y=int(j/sw) emptyImage[i,j]=img[x,y] return emptyImage img=cv2.imread("e:\\lena.bmp") zoom=function(img) cv2.imshow("nearest neighbor",zoom) cv2.imshow("image",img) cv2.waitKey(0)
双线性:
import cv2 import numpy as np import math def function(img,m,n): height,width,channels =img.shape emptyImage=np.zeros((m,n,channels),np.uint8) value=[0,0,0] sh=m/height sw=n/width for i in range(m): for j in range(n): x = i/sh y = j/sw p=(i+0.0)/sh-x q=(j+0.0)/sw-y x=int(x)-1 y=int(y)-1 for k in range(3): if x+1<m and y+1<n: value[k]=int(img[x,y][k]*(1-p)*(1-q)+img[x,y+1][k]*q*(1-p)+img[x+1,y][k]*(1-q)*p+img[x+1,y+1][k]*p*q) emptyImage[i, j] = (value[0], value[1], value[2]) return emptyImage img=cv2.imread("e:\\lena.bmp") zoom=function(img,2048,2048) cv2.imshow("Bilinear Interpolation",zoom) cv2.imshow("image",img) cv2.waitKey(0)
双三次:
import cv2 import numpy as np import math def S(x): x = np.abs(x) if 0 <= x < 1: return 1 - 2 * x * x + x * x * x if 1 <= x < 2: return 4 - 8 * x + 5 * x * x - x * x * x else: return 0 def function(img,m,n): height,width,channels =img.shape emptyImage=np.zeros((m,n,channels),np.uint8) sh=m/height sw=n/width for i in range(m): for j in range(n): x = i/sh y = j/sw p=(i+0.0)/sh-x q=(j+0.0)/sw-y x=int(x)-2 y=int(y)-2 A = np.array([ [S(1 + p), S(p), S(1 - p), S(2 - p)] ]) if x>=m-3: m-1 if y>=n-3: n-1 if x>=1 and x<=(m-3) and y>=1 and y<=(n-3): B = np.array([ [img[x-1, y-1], img[x-1, y], img[x-1, y+1], img[x-1, y+1]], [img[x, y-1], img[x, y], img[x, y+1], img[x, y+2]], [img[x+1, y-1], img[x+1, y], img[x+1, y+1], img[x+1, y+2]], [img[x+2, y-1], img[x+2, y], img[x+2, y+1], img[x+2, y+1]], ]) C = np.array([ [S(1 + q)], [S(q)], [S(1 - q)], [S(2 - q)] ]) blue = np.dot(np.dot(A, B[:, :, 0]), C)[0, 0] green = np.dot(np.dot(A, B[:, :, 1]), C)[0, 0] red = np.dot(np.dot(A, B[:, :, 2]), C)[0, 0] # ajust the value to be in [0,255] def adjust(value): if value > 255: value = 255 elif value < 0: value = 0 return value blue = adjust(blue) green = adjust(green) red = adjust(red) emptyImage[i, j] = np.array([blue, green, red], dtype=np.uint8) return emptyImage img=cv2.imread("e:\\lena.bmp") zoom=function(img,1024,1024) cv2.imshow("cubic",zoom) cv2.imshow("image",img) cv2.waitKey(0)
补充知识:最邻近插值法(The nearest interpolation)实现图像缩放
也称零阶插值。它输出的像素灰度值就等于距离它映射到的位置最近的输入像素的灰度值。但当图像中包含像素之间灰度级有变化的细微结构时,最邻近算法会在图像中产生人为加工的痕迹。
具体计算方法:对于一个目的坐标,设为 M(x,y),通过向后映射法得到其在原始图像的对应的浮点坐标,设为 m(i+u,j+v),其中 i,j 为正整数,u,v 为大于零小于1的小数(下同),则待求象素灰度的值 f(m)。利用浮点 m 相邻的四个像素求f(m)的值。
function re_im = nearest(im, p, q) %最邻近插值法,输入目标图像和行缩放、纵缩放倍数 %ziheng 2016.3.27 [m,n] = size(im); im_R = im(:,:,1); im_G = im(:,:,2); im_B = im(:,:,3); l = round(m*p); h = round(n*q)/3; re_R = uint8(zeros(l,h)); re_G = uint8(zeros(l,h)); re_B = uint8(zeros(l,h)); for dstx = 1:l for dsty = 1:h srcx = max(1,min(m,round(dstx/p))); srcy = max(1,min(n/3,round(dsty/q))); re_R(dstx,dsty) = im_R(srcx,srcy); re_G(dstx,dsty) = im_G(srcx,srcy); re_B(dstx,dsty) = im_B(srcx,srcy); end end re_im = cat(3,re_R,re_G,re_B); figure,imshow(re_im);
以上这篇python 图像插值 最近邻、双线性、双三次实例就是小编分享给大家的全部内容了,希望能给大家一个参考,也希望大家多多支持脚本之家。
相关文章
python机器学习库scikit-learn:SVR的基本应用
这篇文章主要介绍了python机器学习库scikit-learn:SVR的基本应用,文中通过示例代码介绍的非常详细,对大家的学习或者工作具有一定的参考学习价值,需要的朋友们下面随着小编来一起学习学习吧2019-06-06手把手教你打造个性化全栈应用Python Reflex框架全面攻略
Reflex框架是为了解决传统全栈开发中的一些挑战而诞生的,它充分利用了现代前端框架(如React)的优势,与后端技术(如Node.js)深度集成,使得开发者能够更加流畅地构建整个应用,Reflex的设计理念包括简化、响应性和一致性,旨在提高全栈开发的效率和可维护性2023-12-12解决keras,val_categorical_accuracy:,0.0000e+00问题
这篇文章主要介绍了解决keras,val_categorical_accuracy:,0.0000e+00问题,具有很好的参考价值,希望对大家有所帮助。一起跟随小编过来看看吧2020-07-07
最新评论