How can I use standard image processing filters (from OpenCV) to remove long horizontal and vertical lines from an image?

The images are B&W so removing means simply painting black.


illustration of required filter

I'm currently doing it in Python, iterating over pixel rows and cols and detecting ranges of consecutive pixels, removing those that are longer than N pixels. However, it's really slow in comparison to the OpenCV library, and if there's a way of accomplishing the same with OpenCV functions, that'll likely be orders of magnitude faster.

I imagine this can be done by convolution using a kernel that's a row of pixels (for horizontal lines), but I'm having a hard time figuring the exact operation that would do the trick.

  • 2
    Just quick thinking here. Why don't you use Hough Line Detection to find lines and do what you want over the lines you selected? – Tae-Sung Shin Sep 30 '13 at 13:54
  • 1
    Yep was about to post the same thing look at the docs and the theory if needed. – YXD Sep 30 '13 at 13:56
  • It seems to return long line segments broken up into many small ones, which ruins the ability to filter out the insufficiently long ones... any idea why that would happen? – Assaf Lavie Sep 30 '13 at 14:46

if your lines are truly horizontal/vertical, try this

import cv2
import numpy as np
img = cv2.imread('c:/data/test.png')
linek = np.zeros((11,11),dtype=np.uint8)
x=cv2.morphologyEx(gray, cv2.MORPH_OPEN, linek ,iterations=1)


enter image description here

You can refer OpenCV Morphological Transformations documentation for more details.

  • Can someone explain to python-ignorant what linek = np.zeros((11,11),dtype=np.uint8) linek[5,...]=1 does? C++ preferred ;~) – Tõnu Samuel May 23 '14 at 8:34
  • 4
    Mat linek=Mat::zeros(Size(11,11),CV_8UC1);linek.row(5)=255; – Zaw Lin May 23 '14 at 13:37
  • this helps removing horizontal lines... what changes do I need to make to remove vertical lines as well? – ashish mishra Sep 24 '18 at 7:52
  • just add linek[...,5]=1 basically creating a + shaped kernel – Zaw Lin Sep 24 '18 at 7:55

How long is "long". Long, as in, lines that run the length of the entire image, or just longer than n pixels?

If the latter, then you could just use an n+1 X n+1 median or mode filter, and set the corner coefficients to zero, and you'd get the desired effect.

If you're referring to just lines that run the width of the entire image, just use the memcmp() function against a row of data, and compare it to a pre-allocated array of zeros which is the same length as a row. If they are the same, you know you have a blank line that spans the horizontal length of the image, and that row can be deleted.

This will be MUCH faster than the element-wise comparisons you are currently using, and is very well explained here:

Why is memcpy() and memmove() faster than pointer increments?

If you want to repeat the same operation for vertical lines, just transpose the image, and repeat the operation.

I know this is more of a system-optimization level approach than an openCV filter like you requested, but it gets the job done fast and safely. You can speed up the calculation even more if you manage to force the image and your empty array to be 32-bit aligned in memory.


To remove Horizontal Lines from an image you can use an edge detection algorithm to detect edges and then use Hough's Transform in OpenCV to detect lines and color them white:

import cv2
import numpy as np
img = cv2.imread(img,0)
laplacian = cv2.Laplacian(img,cv2.CV_8UC1) # Laplacian Edge Detection
minLineLength = 900
maxLineGap = 100
lines = cv2.HoughLinesP(laplacian,1,np.pi/180,100,minLineLength,maxLineGap)
for line in lines:
    for x1,y1,x2,y2 in line:

This is for javacv.

package com.test11;

import org.opencv.core.*;
import org.opencv.imgproc.Imgproc;
import org.opencv.imgcodecs.Imgcodecs;

public class GetVerticalOrHorizonalLines {

    static{ System.loadLibrary(Core.NATIVE_LIBRARY_NAME); }

    public static void main(String[] args) {

        //Canny process before HoughLine Recognition

        Mat source = Imgcodecs.imread("src//data//bill.jpg");
        Mat gray = new Mat(source.rows(),source.cols(),CvType.CV_8UC1);
        Imgproc.cvtColor(source, gray, Imgproc.COLOR_BGR2GRAY);

        Mat binary = new Mat();
        Imgproc.adaptiveThreshold(gray, binary, 255, Imgproc.ADAPTIVE_THRESH_MEAN_C, Imgproc.THRESH_BINARY, 15, -2);
        Imgcodecs.imwrite("src//data//binary.jpg", binary);

        Mat horizontal = binary.clone();
        int horizontalsize = horizontal.cols() / 30;
        int verticalsize = horizontal.rows() / 30;

        Mat horizontal_element = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(horizontalsize,1));
        //Mat element = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(3,3));
        Imgcodecs.imwrite("src//data//horizontal_element.jpg", horizontal_element);

        Mat Linek = Mat.zeros(source.size(), CvType.CV_8UC1);
        //x =  Imgproc.morphologyEx(gray, dst, op, kernel, anchor, iterations);
        Imgproc.morphologyEx(gray, Linek,Imgproc.MORPH_BLACKHAT, horizontal_element);
        Imgcodecs.imwrite("src//data//bill_RECT_Blackhat.jpg", Linek);

        Mat vertical_element = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(1,verticalsize));
        Imgcodecs.imwrite("src//data//vertical_element.jpg", vertical_element);

        Mat Linek2 = Mat.zeros(source.size(), CvType.CV_8UC1);
        //x =  Imgproc.morphologyEx(gray, dst, op, kernel, anchor, iterations);
        Imgproc.morphologyEx(gray, Linek2,Imgproc.MORPH_CLOSE, vertical_element);
        Imgcodecs.imwrite("src//data//bill_RECT_Blackhat2.jpg", Linek2);

  • The first one, you can remove the vertical lines and horizonal lines in one image simultaneously. The second one, you can remove the vertical lines and horizonal lines in one image separately, That is you will get an image without vertical lines or without horizonal lines. – Anton KONG Mar 2 '17 at 8:27
  • @goto if you didn't check my codes, why did you click dislike? – Anton KONG Mar 2 '17 at 9:14

Another one.

package com.test12;

import org.opencv.core.*;
import org.opencv.imgproc.Imgproc;
import org.opencv.imgcodecs.Imgcodecs;

public class ImageSubstrate {

    static{ System.loadLibrary(Core.NATIVE_LIBRARY_NAME); }

    public static void main(String[] args) {

           Mat source = Imgcodecs.imread("src//data//bill.jpg");

           Mat image_h = Mat.zeros(source.size(), CvType.CV_8UC1);
           Mat image_v = Mat.zeros(source.size(), CvType.CV_8UC1); 

           Mat output = new Mat();
           Core.bitwise_not(source, output);
           Mat output_result = new Mat();

           Mat kernel_h = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(20, 1));
           Imgproc.morphologyEx(output, image_h, Imgproc.MORPH_OPEN, kernel_h);
           Imgcodecs.imwrite("src//data//output.jpg", output);  

           Core.subtract(output, image_h, output_result);
           Imgcodecs.imwrite("src//data//output_result.jpg", output_result);    

           Mat kernel_v = Imgproc.getStructuringElement(Imgproc.MORPH_RECT, new Size(1, 20));   
           Imgproc.morphologyEx(output_result, image_v, Imgproc.MORPH_OPEN, kernel_v);
           Mat output_result2 = new Mat();

           Core.subtract(output_result, image_v, output_result2);          
           Imgcodecs.imwrite("src//data//output_result2.jpg", output_result2);

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