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statistical_outlier_removal.hpp
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39 
40 #ifndef PCL_FILTERS_IMPL_STATISTICAL_OUTLIER_REMOVAL_H_
41 #define PCL_FILTERS_IMPL_STATISTICAL_OUTLIER_REMOVAL_H_
42 
44 #include <pcl/common/io.h>
45 
47 template <typename PointT> void
49 {
50  std::vector<int> indices;
51  if (keep_organized_)
52  {
53  bool temp = extract_removed_indices_;
54  extract_removed_indices_ = true;
55  applyFilterIndices (indices);
56  extract_removed_indices_ = temp;
57 
58  output = *input_;
59  for (int rii = 0; rii < static_cast<int> (removed_indices_->size ()); ++rii) // rii = removed indices iterator
60  output.points[(*removed_indices_)[rii]].x = output.points[(*removed_indices_)[rii]].y = output.points[(*removed_indices_)[rii]].z = user_filter_value_;
61  if (!pcl_isfinite (user_filter_value_))
62  output.is_dense = false;
63  }
64  else
65  {
66  applyFilterIndices (indices);
67  copyPointCloud (*input_, indices, output);
68  }
69 }
70 
72 template <typename PointT> void
74 {
75  // Initialize the search class
76  if (!searcher_)
77  {
78  if (input_->isOrganized ())
79  searcher_.reset (new pcl::search::OrganizedNeighbor<PointT> ());
80  else
81  searcher_.reset (new pcl::search::KdTree<PointT> (false));
82  }
83  searcher_->setInputCloud (input_);
84 
85  // The arrays to be used
86  std::vector<int> nn_indices (mean_k_);
87  std::vector<float> nn_dists (mean_k_);
88  std::vector<float> distances (indices_->size ());
89  indices.resize (indices_->size ());
90  removed_indices_->resize (indices_->size ());
91  int oii = 0, rii = 0; // oii = output indices iterator, rii = removed indices iterator
92 
93  // First pass: Compute the mean distances for all points with respect to their k nearest neighbors
94  for (int iii = 0; iii < static_cast<int> (indices_->size ()); ++iii) // iii = input indices iterator
95  {
96  if (!pcl_isfinite (input_->points[(*indices_)[iii]].x) ||
97  !pcl_isfinite (input_->points[(*indices_)[iii]].y) ||
98  !pcl_isfinite (input_->points[(*indices_)[iii]].z))
99  {
100  distances[iii] = 0.0;
101  continue;
102  }
103 
104  // Perform the nearest k search
105  if (searcher_->nearestKSearch ((*indices_)[iii], mean_k_ + 1, nn_indices, nn_dists) == 0)
106  {
107  distances[iii] = 0.0;
108  PCL_WARN ("[pcl::%s::applyFilter] Searching for the closest %d neighbors failed.\n", getClassName ().c_str (), mean_k_);
109  continue;
110  }
111 
112  // Calculate the mean distance to its neighbors
113  double dist_sum = 0.0;
114  for (int k = 1; k < mean_k_ + 1; ++k) // k = 0 is the query point
115  dist_sum += sqrt (nn_dists[k]);
116  distances[iii] = static_cast<float> (dist_sum / mean_k_);
117  }
118 
119  // Estimate the mean and the standard deviation of the distance vector
120  double mean, stddev;
121  getMeanStd (distances, mean, stddev);
122  double distance_threshold = mean + std_mul_ * stddev;
123 
124  // Second pass: Classify the points on the computed distance threshold
125  for (int iii = 0; iii < static_cast<int> (indices_->size ()); ++iii) // iii = input indices iterator
126  {
127  // Points having a too high average distance are outliers and are passed to removed indices
128  // Unless negative was set, then it's the opposite condition
129  if ((!negative_ && distances[iii] > distance_threshold) || (negative_ && distances[iii] <= distance_threshold))
130  {
131  if (extract_removed_indices_)
132  (*removed_indices_)[rii++] = (*indices_)[iii];
133  continue;
134  }
135 
136  // Otherwise it was a normal point for output (inlier)
137  indices[oii++] = (*indices_)[iii];
138  }
139 
140  // Resize the output arrays
141  indices.resize (oii);
142  removed_indices_->resize (rii);
143 }
144 
145 #define PCL_INSTANTIATE_StatisticalOutlierRemoval(T) template class PCL_EXPORTS pcl::StatisticalOutlierRemoval<T>;
146 
147 #endif // PCL_FILTERS_IMPL_STATISTICAL_OUTLIER_REMOVAL_H_
148