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Herb Derby66498bc2017-11-03 13:36:55 -04001/*
2 * Copyright 2017 Google Inc.
3 *
4 * Use of this source code is governed by a BSD-style license that can be
5 * found in the LICENSE file.
6 */
7
Mike Kleinc0bd9f92019-04-23 12:05:21 -05008#include "src/core/SkGaussFilter.h"
Herb Derby66498bc2017-11-03 13:36:55 -04009
10#include <cmath>
11#include <tuple>
12#include <vector>
Mike Kleinc0bd9f92019-04-23 12:05:21 -050013#include "tests/Test.h"
Herb Derby66498bc2017-11-03 13:36:55 -040014
15// one part in a million
16static constexpr double kEpsilon = 0.000001;
17
18static double careful_add(int n, double* gauss) {
19 // Sum smallest to largest to retain precision.
20 double sum = 0;
21 for (int i = n - 1; i >= 1; i--) {
22 sum += 2.0 * gauss[i];
23 }
24 sum += gauss[0];
25 return sum;
26}
27
28DEF_TEST(SkGaussFilterCommon, r) {
Mike Klein630e7d62018-11-06 17:05:32 -050029 using Test = std::tuple<double, std::vector<double>>;
Herb Derby66498bc2017-11-03 13:36:55 -040030
31 auto golden_check = [&](const Test& test) {
Mike Klein630e7d62018-11-06 17:05:32 -050032 double sigma; std::vector<double> golden;
33 std::tie(sigma, golden) = test;
34 SkGaussFilter filter{sigma};
Herb Derby7ceb0b82017-11-16 14:38:57 -050035 double result[SkGaussFilter::kGaussArrayMax];
36 int n = 0;
37 for (auto d : filter) {
38 result[n++] = d;
39 }
40 REPORTER_ASSERT(r, static_cast<size_t>(n) == golden.size());
Herb Derby66498bc2017-11-03 13:36:55 -040041 double sum = careful_add(n, result);
42 REPORTER_ASSERT(r, sum == 1.0);
43 for (size_t i = 0; i < golden.size(); i++) {
44 REPORTER_ASSERT(r, std::abs(golden[i] - result[i]) < kEpsilon);
45 }
46 };
47
48 // The following two sigmas account for about 85% of all sigmas used for masks.
49 // Golden values generated using Mathematica.
50 auto tests = {
Herb Derby66498bc2017-11-03 13:36:55 -040051 // GaussianMatrix[{{Automatic}, {.788675}}]
Mike Klein630e7d62018-11-06 17:05:32 -050052 Test{0.788675, {0.593605, 0.176225, 0.0269721}},
Herb Derby66498bc2017-11-03 13:36:55 -040053
54 // GaussianMatrix[{{4}, {1.07735}}, Method -> "Bessel"]
Mike Klein630e7d62018-11-06 17:05:32 -050055 Test{1.07735, {0.429537, 0.214955, 0.059143, 0.0111337}},
Herb Derby66498bc2017-11-03 13:36:55 -040056 };
57
58 for (auto& test : tests) {
59 golden_check(test);
60 }
61}
62
63DEF_TEST(SkGaussFilterSweep, r) {
64 // The double just before 2.0.
65 const double maxSigma = nextafter(2.0, 0.0);
Mike Klein630e7d62018-11-06 17:05:32 -050066 auto check = [&](double sigma) {
67 SkGaussFilter filter{sigma};
Herb Derby7ceb0b82017-11-16 14:38:57 -050068 double result[SkGaussFilter::kGaussArrayMax];
69 int n = 0;
70 for (auto d : filter) {
71 result[n++] = d;
72 }
73 REPORTER_ASSERT(r, n <= SkGaussFilter::kGaussArrayMax);
Herb Derby66498bc2017-11-03 13:36:55 -040074 double sum = careful_add(n, result);
75 REPORTER_ASSERT(r, sum == 1.0);
76 };
77
Mike Klein630e7d62018-11-06 17:05:32 -050078 for (double sigma = 0.0; sigma < 2.0; sigma += 0.1) {
79 check(sigma);
Herb Derby66498bc2017-11-03 13:36:55 -040080 }
Mike Klein630e7d62018-11-06 17:05:32 -050081 check(maxSigma);
Herb Derby66498bc2017-11-03 13:36:55 -040082}