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prior_box.py
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from __future__ import division
from math import sqrt as sqrt
from itertools import product as product
import torch
class PriorBox(object):
"""Compute priorbox coordinates in center-offset form for each source
feature map.
"""
def __init__(self, cfg):
super(PriorBox, self).__init__()
self.image_size = cfg['min_dim']
# number of priors for feature map location (either 4 or 6)
self.num_priors = len(cfg['aspect_ratios'])
self.variance = cfg['variance'] or [0.1]
self.feature_maps = cfg['feature_maps']
self.min_sizes = cfg['min_sizes']
self.max_sizes = cfg['max_sizes']
self.steps = cfg['steps']
self.aspect_ratios = cfg['aspect_ratios']
self.clip = cfg['clip']
self.version = cfg['name']
for v in self.variance:
if v <= 0:
raise ValueError('Variances must be greater than 0')
def forward(self):
mean = []
for k, f in enumerate(self.feature_maps):
for i, j in product(range(f), repeat=2):
f_k = self.image_size / self.steps[k]
# unit center x,y
cx = (j + 0.5) / f_k
cy = (i + 0.5) / f_k
# aspect_ratio: 1
# rel size: min_size
s_k = self.min_sizes[k]/self.image_size
mean += [cx, cy, s_k, s_k]
# aspect_ratio: 1
# rel size: sqrt(s_k * s_(k+1))
s_k_prime = sqrt(s_k * (self.max_sizes[k]/self.image_size))
mean += [cx, cy, s_k_prime, s_k_prime]
# rest of aspect ratios
for ar in self.aspect_ratios[k]:
mean += [cx, cy, s_k*sqrt(ar), s_k/sqrt(ar)]
mean += [cx, cy, s_k/sqrt(ar), s_k*sqrt(ar)]
# back to torch land
output = torch.Tensor(mean).view(-1, 4)
if self.clip:
output.clamp_(max=1, min=0)
return output