Difference between revisions of "Example Binary Image"

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Binary images are images where each pixel can take on two values, typically represented by 0 or 1.  Binary images are easy to compute and fast to process, which makes them popular in many applications.
Binary images are images where each pixel can take on two values, typically represented by 0 or 1.  Binary images are easy to compute and fast to process, which makes them popular in many applications.


Example File: [https://github.com/lessthanoptimal/BoofCV/blob/master/examples/src/boofcv/examples/BinaryImageExample.java BinaryImageExample.java]
Example File: [https://github.com/lessthanoptimal/BoofCV/blob/master/examples/src/boofcv/examples/ExampleBinaryImage.java ExampleBinaryImage.java]


Concepts:
Concepts:

Revision as of 18:20, 30 November 2011

Binary Image Processing

Binary images are images where each pixel can take on two values, typically represented by 0 or 1. Binary images are easy to compute and fast to process, which makes them popular in many applications.

Example File: ExampleBinaryImage.java

Concepts:

  • Image Thresholding
  • Morphological Operations
  • Binary Labeling
  • Pixel Math
  • Image Rendering

Relevant Applets:

Basic Example

In this example a threshold is computed for the input image dynamically and the resulting binary image shown.

	public static void binaryExample( BufferedImage image )
	{
		// convert into a usable format
		ImageFloat32 input = ConvertBufferedImage.convertFrom(image,null,ImageFloat32.class);
		ImageUInt8 binary = new ImageUInt8(input.width,input.height);

		// the mean pixel value is often a reasonable threshold when creating a binary image
		float mean = PixelMath.sum(input)/(input.width*input.height);

		// create a binary image
		ThresholdImageOps.threshold(input,binary,mean,true);

		// Render the binary image for output and display it in a window
		BufferedImage visualBinary = VisualizeBinaryData.renderBinary(binary,null);
		ShowImages.showWindow(visualBinary,"Binary Image");
	}

Labeled Example

Here clustered of blobs are detected and arbitrarily assigned labels. Noise is reduced through morphological image operations.

	public static void labeledExample( BufferedImage image )
	{
		// convert into a usable format
		ImageFloat32 input = ConvertBufferedImage.convertFrom(image,null,ImageFloat32.class);
		ImageUInt8 binary = new ImageUInt8(input.width,input.height);
		ImageSInt32 blobs = new ImageSInt32(input.width,input.height);

		// the mean pixel value is often a reasonable threshold when creating a binary image
		float mean = PixelMath.sum(input)/(input.width*input.height);

		// create a binary image
		ThresholdImageOps.threshold(input,binary,mean,true);

		// remove small blobs through erosion and dilation
		// The null in the input indicates that it should internally declare the work image it needs
		// this is less efficient, but easier to code.
		binary = BinaryImageOps.erode8(binary,null);
		binary = BinaryImageOps.dilate8(binary, null);

		// Detect blobs inside the binary image and assign labels to them
		int numBlobs = BinaryImageOps.labelBlobs4(binary,blobs);

		// Render the binary image for output and display it in a window
		BufferedImage visualized = VisualizeBinaryData.renderLabeled(blobs, numBlobs, null);
		ShowImages.showWindow(visualized,"Labeled Image");
	}