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/*
 * #%L
 * Image processing operations for SciJava Ops.
 * %%
 * Copyright (C) 2014 - 2024 SciJava developers.
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package org.scijava.ops.image.threshold.intermodes;

import org.scijava.ops.image.threshold.AbstractComputeThresholdHistogram;
import org.scijava.ops.image.threshold.Thresholds;
import net.imglib2.histogram.Histogram1d;
import net.imglib2.type.numeric.RealType;

import org.scijava.ops.spi.OpExecutionException;

// NB - this plugin adapted from Gabriel Landini's code of his AutoThreshold
// plugin found in Fiji (version 1.14).

/**
 * Implements an intermodes threshold method by Prewitt {@literal &} Mendelsohn.
 *
 * @author Barry DeZonia
 * @author Gabriel Landini
 * @implNote op names='threshold.intermodes', priority='100.'
 */
public class ComputeIntermodesThreshold> extends
	AbstractComputeThresholdHistogram
{

	/**
	 * @param hist the {@link Histogram1d}
	 * @return the Intermodes threshold
	 */
	@Override
	public long computeBin(final Histogram1d hist) {
		final long[] histogram = hist.toLongArray();
		return computeBin(histogram);
	}

	/**
	 * J. M. S. Prewitt and M. L. Mendelsohn, "The analysis of cell images,"
* in
* Annals of the New York Academy of Sciences, vol. 128, pp. 1035-1053,
* 1966.
* ported to ImageJ plugin by G.Landini from Antti Niemisto's Matlab
* code
* (relicensed BSD 2-12-13)
* Original Matlab code Copyright (C) 2004 Antti Niemisto
* See http://www.cs.tut.fi/~ant/histthresh/ for an excellent slide
* presentation and the original Matlab code.
*
* Assumes a bimodal histogram. The histogram needs is smoothed (using a
* running average of size 3, iteratively) until there are only two
* local
* maxima.
* j and k
* Threshold t is (j+k)/2.
* Images with histograms having extremely unequal peaks or a broad and
* ??at valley are unsuitable for this method. */ public static long computeBin(final long[] histogram) { final double[] iHisto = new double[histogram.length]; int iter = 0; int threshold = -1; for (int i = 0; i < histogram.length; i++) iHisto[i] = histogram[i]; while (!Thresholds.bimodalTest(iHisto)) { // smooth with a 3 point running mean filter double previous = 0, current = 0, next = iHisto[0]; for (int i = 0; i < histogram.length - 1; i++) { previous = current; current = next; next = iHisto[i + 1]; iHisto[i] = (previous + current + next) / 3; } iHisto[histogram.length - 1] = (current + next) / 3; iter++; if (iter > 10000) { throw new OpExecutionException( "Intermodes Threshold not found after 10000 iterations."); } } // The threshold is the mean between the two peaks. int tt = 0; for (int i = 1; i < histogram.length - 1; i++) { if (iHisto[i - 1] < iHisto[i] && iHisto[i + 1] < iHisto[i]) { tt += i; // IJ.log("mode:" +i); } } threshold = (int) Math.floor(tt / 2.0); return threshold; } }




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