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Radius NN with cKDTree #60

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27 changes: 15 additions & 12 deletions pygsp/_nearest_neighbor.py
Original file line number Diff line number Diff line change
Expand Up @@ -46,28 +46,31 @@ def _scipy_kdtree(features, _, order, kind, k, radius, params):
return neighbors, distances


def _scipy_ckdtree(features, _, order, kind, k, radius, params):
def _scipy_ckdtree(features, metric, order, kind, k, radius, params):
if order is None:
raise ValueError('invalid metric for scipy-kdtree')
eps = params.pop('eps', 0)
tree = spatial.cKDTree(features, **params)
params = dict(p=order, eps=eps, n_jobs=-1)
if kind == 'knn':
params['k'] = k + 1
elif kind == 'radius':
params['k'] = features.shape[0] # number of vertices
params['distance_upper_bound'] = radius
distances, neighbors = tree.query(features, **params)
if kind == 'knn':
distances, neighbors = tree.query(features, **params)
return neighbors, distances
elif kind == 'radius':
neighbors = tree.query_ball_point(features,
radius * np.ones((features.shape[0],)),
p=order)
dist = []
neigh = []
for distance, neighbor in zip(distances, neighbors):
mask = (distance != np.inf)
dist.append(distance[mask])
neigh.append(neighbor[mask])
return neigh, dist
metric = 'cityblock' if metric == 'manhattan' else metric
metric = 'chebyshev' if metric == 'max_dist' else metric
params = dict(metric=metric)
if metric == 'minkowski':
params['p'] = order
for i, neighbor in enumerate(neighbors):
dist.append(spatial.distance.cdist([features[i]],
features[neighbor],
**params).flatten())
return neighbors, dist


def _flann(features, metric, order, kind, k, radius, params):
Expand Down