Esempio n. 1
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 /**
  * Computes an alpha trimmed mean upon the current region of the current function. Note that this
  * method uses memory to make a copy of the input values. Larger input regions might require a lot
  * of memory.
  *
  * @param alpha A number between 0 and 0.5 specifying the proportion of samples to ignore on each
  *     end.
  * @return The measured value
  */
 public double alphaTrimmedMean(double alpha) {
   if ((alpha < 0) || (alpha >= 0.5))
     throw new IllegalArgumentException("alpha value must be >= 0 and < 0.5");
   T tmp = func.createOutput();
   values.clear();
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     values.add(tmp.getRealDouble());
   }
   values.sortValues();
   double tailSize = alpha * values.size();
   // can we avoid interpolation?
   if (tailSize == Math.floor(tailSize)) {
     // yes, trim count is exactly an integer
     return calcTrimmedMean(values, (int) tailSize);
   }
   // no, trim count is a float value
   // calc two trimmed means and interpolate to find the value between them
   double mean1 = calcTrimmedMean(values, (int) Math.floor(tailSize));
   double mean2 = calcTrimmedMean(values, (int) Math.ceil(tailSize));
   double fraction = tailSize - Math.floor(tailSize);
   double interpolation = ((1 - fraction) * mean1) + (fraction * mean2);
   return interpolation;
 }
Esempio n. 2
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  @Test
  public void testCrossNeighborhoodProduct() {

    Img<DoubleType> inputImg = makeInputImage();

    /* old way
    DiscreteNeigh neigh = new DiscreteNeigh(new long[2], new long[]{1,1}, new long[]{1,1});
    Condition<long[]> condition = new OnTheXYCrossCondition();
    Function<long[],DoubleType> input = new RealImageFunction<DoubleType,DoubleType>(inputImg, new DoubleType());
    Function<long[],DoubleType> one = new ConstantRealFunction<long[],DoubleType>(inputImg.firstElement(),1);
    Function<long[],DoubleType> conditionalFunc = new ConditionalFunction<long[],DoubleType>(condition, input, one);
    Function<long[],DoubleType> prodFunc = new RealProductFunction<DoubleType>(conditionalFunc);
    long[] index = new long[2];
    DoubleType output = new DoubleType();
    for (int x = 1; x < XSIZE-1; x++) {
    	for (int y = 1; y < YSIZE-1; y++) {
    		index[0] = x;
    		index[1] = y;
    		neigh.moveTo(index);
    		prodFunc.evaluate(neigh, neigh.getKeyPoint(), output);
    		//{
    		//	System.out.println(" FAILURE at ("+x+","+y+"): expected ("
    		//		+expectedValue(x,y)+") actual ("+output.getRealDouble()+")");
    		//	success = false;
    		//}
    		assertTrue(veryClose(output.getRealDouble(), expectedValue(x,y)));
    	}
    }
    */

    ArrayList<long[]> pts = new ArrayList<long[]>();
    pts.add(new long[] {-1, -1});
    pts.add(new long[] {-1, 1});
    pts.add(new long[] {0, 0});
    pts.add(new long[] {1, -1});
    pts.add(new long[] {1, 1});
    GeneralPointSet neigh = new GeneralPointSet(new long[] {0, 0}, pts);
    Function<long[], DoubleType> input =
        new RealImageFunction<DoubleType, DoubleType>(inputImg, new DoubleType());
    Function<PointSet, DoubleType> prodFunc = new RealProductFunction<DoubleType>(input);
    HyperVolumePointSet space =
        new HyperVolumePointSet(new long[] {1, 1}, new long[] {XSIZE - 2, YSIZE - 2});
    PointSetInputIterator iter = new PointSetInputIterator(space, neigh);
    DoubleType output = new DoubleType();
    PointSet points = null;
    while (iter.hasNext()) {
      points = iter.next(points);
      prodFunc.compute(points, output);
      int x = (int) points.getOrigin()[0];
      int y = (int) points.getOrigin()[1];
      // {
      //	System.out.println(" Point ("+x+","+y+"): expected ("
      //		+expectedValue(x,y)+") actual ("+output.getRealDouble()+")");
      //	success = false;
      // }
      assertTrue(veryClose(output.getRealDouble(), expectedValue(x, y)));
    }
  }
Esempio n. 3
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 /**
  * Computes the product of all the values of the current region of the current function.
  *
  * @return The measured value
  */
 public double product() {
   T tmp = func.createOutput();
   double prod = 1;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     prod *= value;
   }
   return prod;
 }
Esempio n. 4
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 /**
  * Computes the minimum value upon the current region of the current function.
  *
  * @return The measured value
  */
 public double min() {
   T tmp = func.createOutput();
   double min = Double.POSITIVE_INFINITY;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     min = Math.min(min, value);
   }
   return min;
 }
Esempio n. 5
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 /**
  * Computes a trimmed mean upon the current region of the current function. Note that this method
  * uses memory to make a copy of the input values. Larger input regions might require a lot of
  * memory.
  *
  * @param halfTrimSize The number of samples to ignore from each end of the data
  * @return The measured value
  */
 public double trimmedMean(int halfTrimSize) {
   T tmp = func.createOutput();
   values.clear();
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     values.add(tmp.getRealDouble());
   }
   values.sortValues();
   return calcTrimmedMean(values, halfTrimSize);
 }
Esempio n. 6
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 /**
  * Computes the maximum value upon the current region of the current function.
  *
  * @return The measured value
  */
 public double max() {
   T tmp = func.createOutput();
   double max = Double.NEGATIVE_INFINITY;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     max = Math.max(max, value);
   }
   return max;
 }
Esempio n. 7
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 /**
  * Computes the sum of all the values of the current region of the current function.
  *
  * @return The measured value
  */
 public double sum() {
   T tmp = func.createOutput();
   double sum = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     sum += value;
   }
   return sum;
 }
Esempio n. 8
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 /**
  * Computes the arithmetic mean (or average) upon the current region of the current function.
  *
  * @return The measured value
  */
 public double arithmeticMean() {
   T tmp = func.createOutput();
   double sum = 0;
   long numElements = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     sum += tmp.getRealDouble();
     numElements++;
   }
   return sum / numElements;
 }
Esempio n. 9
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 /**
  * Computes the contraharmonic mean upon the current region of the current function.
  *
  * @return The measured value
  */
 public double contraharmonicMean(double order) {
   T tmp = func.createOutput();
   double sum1 = 0;
   double sum2 = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     sum1 += Math.pow(value, order + 1);
     sum2 += Math.pow(value, order);
   }
   return sum1 / sum2;
 }
Esempio n. 10
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 /**
  * Computes the sum of squared deviations of the values of the current region of the current
  * function.
  *
  * @return The measured value
  */
 public double sumOfSquaredDeviations() {
   T tmp = func.createOutput();
   final double xbar = arithmeticMean();
   double sum = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     double term = value - xbar;
     sum += (term * term);
   }
   return sum;
 }
Esempio n. 11
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 /**
  * Computes the harmonic mean upon the current region of the current function.
  *
  * @return The measured value
  */
 public double harmonicMean() {
   T tmp = func.createOutput();
   double sum = 0;
   long numElements = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     sum += 1 / value;
     numElements++;
   }
   return numElements / sum; // looks weird but it is correct
 }
Esempio n. 12
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 /**
  * Computes a weighted sum of the current function values over the current region. The weights are
  * provided and there must be as many weights as there are points in the current region.
  *
  * @return The measured value
  */
 public double weightedSum(double[] weights) {
   long numElements = region.size();
   if (numElements != weights.length)
     throw new IllegalArgumentException("number of weights does not equal number of samples");
   T tmp = func.createOutput();
   double sum = 0;
   int i = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     sum += weights[i++] * value;
   }
   return sum;
 }
Esempio n. 13
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 /**
  * Computes the center of mass point of the current region of the current function. Returns it as
  * a pair of Doubles. The first element in the pair is the x component and the second element is
  * the y component.
  *
  * @return The measured point stored in a Tuple2
  */
 public Tuple2<Double, Double> centerOfMassXY() {
   T tmp = func.createOutput();
   double sumV = 0;
   double sumX = 0;
   double sumY = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double v = tmp.getRealDouble();
     sumV += v;
     sumX += v * pos[0];
     sumY += v * pos[1];
   }
   double cx = (sumX / sumV) + 0.5;
   double cy = (sumY / sumV) + 0.5;
   return new Tuple2<Double, Double>(cx, cy);
 }
Esempio n. 14
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  /**
   * Computes the median upon the current region of the current function. Note that this method uses
   * memory to make a copy of the input values. Larger input regions might require a lot of memory.
   *
   * @return The measured value
   */
  public double median() {
    T tmp = func.createOutput();
    values.clear();
    iter.reset();
    while (iter.hasNext()) {
      long[] pos = iter.next();
      func.compute(pos, tmp);
      values.add(tmp.getRealDouble());
    }
    final int numElements = values.size();
    if (numElements <= 0)
      throw new IllegalArgumentException("number of samples must be greater than 0");

    values.sortValues();

    // odd number of elements
    if ((numElements % 2) == 1) return values.get(numElements / 2);

    // else an even number of elements
    double value1 = values.get((numElements / 2) - 1);
    double value2 = values.get((numElements / 2));
    return (value1 + value2) / 2;
  }
Esempio n. 15
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 /**
  * Computes the (biased) kurtosis value upon the current region of the current function.
  *
  * @return The measured value
  */
 public double populationKurtosis() {
   T tmp = func.createOutput();
   double xbar = arithmeticMean();
   double s2 = 0;
   double s4 = 0;
   long numElements = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     numElements++;
     double v = value - xbar;
     double v2 = v * v;
     double v4 = v2 * v2;
     s2 += v2;
     s4 += v4;
   }
   double n = numElements;
   double m2 = s2 / n;
   double m4 = s4 / n;
   return m4 / (m2 * m2);
 }
Esempio n. 16
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 /**
  * Computes the (biased) skew value upon the current region of the current function.
  *
  * @return The measured value
  */
 public double populationSkew() {
   T tmp = func.createOutput();
   double xbar = arithmeticMean();
   double s2 = 0;
   double s3 = 0;
   long numElements = 0;
   iter.reset();
   while (iter.hasNext()) {
     long[] pos = iter.next();
     func.compute(pos, tmp);
     double value = tmp.getRealDouble();
     numElements++;
     double v = value - xbar;
     double v2 = v * v;
     double v3 = v2 * v;
     s2 += v2;
     s3 += v3;
   }
   double n = numElements;
   double m2 = s2 / n;
   double m3 = s3 / n;
   return m3 / Math.pow(m2, 1.5);
 }
 private double measure(final Function<PointSet, DoubleType> func, final PointSet region) {
   final DoubleType output = new DoubleType();
   func.compute(region, output);
   return output.getRealDouble();
 }
 @Override
 public DiscreteTranslationFunction<T> copy() {
   return new DiscreteTranslationFunction<T>(otherFunc.copy(), deltas.clone());
 }
 @Override
 public T createOutput() {
   return otherFunc.createOutput();
 }
 @Override
 public void compute(long[] point, T output) {
   for (int i = 0; i < deltas.length; i++) localPoint[i] = point[i] + deltas[i];
   otherFunc.compute(localPoint, output);
 }