/* * Copyright (c) 2017, Alliance for Open Media. All rights reserved * * This source code is subject to the terms of the BSD 2 Clause License and * the Alliance for Open Media Patent License 1.0. If the BSD 2 Clause License * was not distributed with this source code in the LICENSE file, you can * obtain it at www.aomedia.org/license/software. If the Alliance for Open * Media Patent License 1.0 was not distributed with this source code in the * PATENTS file, you can obtain it at www.aomedia.org/license/patent. */ #include #include #include #include "aom_dsp/noise_util.h" #include "aom_mem/aom_mem.h" double aom_normalized_cross_correlation(const double *a, const double *b, int n) { double c = 0; double a_len = 0; double b_len = 0; for (int i = 0; i < n; ++i) { a_len += a[i] * a[i]; b_len += b[i] * b[i]; c += a[i] * b[i]; } return c / (sqrt(a_len) * sqrt(b_len)); } int aom_noise_data_validate(const double *data, int w, int h) { const double kVarianceThreshold = 2; const double kMeanThreshold = 2; int x = 0, y = 0; int ret_value = 1; double var = 0, mean = 0; double *mean_x, *mean_y, *var_x, *var_y; // Check that noise variance is not increasing in x or y // and that the data is zero mean. mean_x = (double *)aom_malloc(sizeof(*mean_x) * w); var_x = (double *)aom_malloc(sizeof(*var_x) * w); mean_y = (double *)aom_malloc(sizeof(*mean_x) * h); var_y = (double *)aom_malloc(sizeof(*var_y) * h); memset(mean_x, 0, sizeof(*mean_x) * w); memset(var_x, 0, sizeof(*var_x) * w); memset(mean_y, 0, sizeof(*mean_y) * h); memset(var_y, 0, sizeof(*var_y) * h); for (y = 0; y < h; ++y) { for (x = 0; x < w; ++x) { const double d = data[y * w + x]; var_x[x] += d * d; var_y[y] += d * d; mean_x[x] += d; mean_y[y] += d; var += d * d; mean += d; } } mean /= (w * h); var = var / (w * h) - mean * mean; for (y = 0; y < h; ++y) { mean_y[y] /= h; var_y[y] = var_y[y] / h - mean_y[y] * mean_y[y]; if (fabs(var_y[y] - var) >= kVarianceThreshold) { fprintf(stderr, "Variance distance too large %f %f\n", var_y[y], var); ret_value = 0; break; } if (fabs(mean_y[y] - mean) >= kMeanThreshold) { fprintf(stderr, "Mean distance too large %f %f\n", mean_y[y], mean); ret_value = 0; break; } } for (x = 0; x < w; ++x) { mean_x[x] /= w; var_x[x] = var_x[x] / w - mean_x[x] * mean_x[x]; if (fabs(var_x[x] - var) >= kVarianceThreshold) { fprintf(stderr, "Variance distance too large %f %f\n", var_x[x], var); ret_value = 0; break; } if (fabs(mean_x[x] - mean) >= kMeanThreshold) { fprintf(stderr, "Mean distance too large %f %f\n", mean_x[x], mean); ret_value = 0; break; } } aom_free(mean_x); aom_free(mean_y); aom_free(var_x); aom_free(var_y); return ret_value; }