ceres-solver-v1 / colmap /src /optim /loransac_test.cc
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// Copyright (c) 2022, ETH Zurich and UNC Chapel Hill.
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// Author: Johannes L. Schoenberger (jsch-at-demuc-dot-de)
#define TEST_NAME "optim/ransac"
#include "util/testing.h"
#include <Eigen/Core>
#include <Eigen/Geometry>
#include "base/pose.h"
#include "base/similarity_transform.h"
#include "estimators/similarity_transform.h"
#include "optim/loransac.h"
#include "util/random.h"
using namespace colmap;
BOOST_AUTO_TEST_CASE(TestReport) {
LORANSAC<SimilarityTransformEstimator<3>,
SimilarityTransformEstimator<3>>::Report report;
BOOST_CHECK_EQUAL(report.success, false);
BOOST_CHECK_EQUAL(report.num_trials, 0);
BOOST_CHECK_EQUAL(report.support.num_inliers, 0);
BOOST_CHECK_EQUAL(report.support.residual_sum,
std::numeric_limits<double>::max());
BOOST_CHECK_EQUAL(report.inlier_mask.size(), 0);
}
BOOST_AUTO_TEST_CASE(TestSimilarityTransform) {
SetPRNGSeed(0);
const size_t num_samples = 1000;
const size_t num_outliers = 400;
// Create some arbitrary transformation.
const SimilarityTransform3 orig_tform(2, ComposeIdentityQuaternion(),
Eigen::Vector3d(100, 10, 10));
// Generate exact data
std::vector<Eigen::Vector3d> src;
std::vector<Eigen::Vector3d> dst;
for (size_t i = 0; i < num_samples; ++i) {
src.emplace_back(i, std::sqrt(i) + 2, std::sqrt(2 * i + 2));
dst.push_back(src.back());
orig_tform.TransformPoint(&dst.back());
}
// Add some faulty data.
for (size_t i = 0; i < num_outliers; ++i) {
dst[i] = Eigen::Vector3d(RandomReal(-3000.0, -2000.0),
RandomReal(-4000.0, -3000.0),
RandomReal(-5000.0, -4000.0));
}
// Robustly estimate transformation using RANSAC.
RANSACOptions options;
options.max_error = 10;
LORANSAC<SimilarityTransformEstimator<3>, SimilarityTransformEstimator<3>>
ransac(options);
const auto report = ransac.Estimate(src, dst);
BOOST_CHECK_EQUAL(report.success, true);
BOOST_CHECK_GT(report.num_trials, 0);
// Make sure outliers were detected correctly.
BOOST_CHECK_EQUAL(report.support.num_inliers, num_samples - num_outliers);
for (size_t i = 0; i < num_samples; ++i) {
if (i < num_outliers) {
BOOST_CHECK(!report.inlier_mask[i]);
} else {
BOOST_CHECK(report.inlier_mask[i]);
}
}
// Make sure original transformation is estimated correctly.
const double matrix_diff =
(orig_tform.Matrix().topLeftCorner<3, 4>() - report.model).norm();
BOOST_CHECK(std::abs(matrix_diff) < 1e-6);
}