deep-tempest/end-to-end/utils/utils_receptivefield.py

62 lines
2.1 KiB
Python

# -*- coding: utf-8 -*-
# online calculation: https://fomoro.com/research/article/receptive-field-calculator#
# [filter size, stride, padding]
#Assume the two dimensions are the same
#Each kernel requires the following parameters:
# - k_i: kernel size
# - s_i: stride
# - p_i: padding (if padding is uneven, right padding will higher than left padding; "SAME" option in tensorflow)
#
#Each layer i requires the following parameters to be fully represented:
# - n_i: number of feature (data layer has n_1 = imagesize )
# - j_i: distance (projected to image pixel distance) between center of two adjacent features
# - r_i: receptive field of a feature in layer i
# - start_i: position of the first feature's receptive field in layer i (idx start from 0, negative means the center fall into padding)
import math
def outFromIn(conv, layerIn):
n_in = layerIn[0]
j_in = layerIn[1]
r_in = layerIn[2]
start_in = layerIn[3]
k = conv[0]
s = conv[1]
p = conv[2]
n_out = math.floor((n_in - k + 2*p)/s) + 1
actualP = (n_out-1)*s - n_in + k
pR = math.ceil(actualP/2)
pL = math.floor(actualP/2)
j_out = j_in * s
r_out = r_in + (k - 1)*j_in
start_out = start_in + ((k-1)/2 - pL)*j_in
return n_out, j_out, r_out, start_out
def printLayer(layer, layer_name):
print(layer_name + ":")
print(" n features: %s jump: %s receptive size: %s start: %s " % (layer[0], layer[1], layer[2], layer[3]))
layerInfos = []
if __name__ == '__main__':
convnet = [[3,1,1],[3,1,1],[3,1,1],[4,2,1],[2,2,0],[3,1,1]]
layer_names = ['conv1','conv2','conv3','conv4','conv5','conv6','conv7','conv8','conv9','conv10','conv11','conv12']
imsize = 128
print ("-------Net summary------")
currentLayer = [imsize, 1, 1, 0.5]
printLayer(currentLayer, "input image")
for i in range(len(convnet)):
currentLayer = outFromIn(convnet[i], currentLayer)
layerInfos.append(currentLayer)
printLayer(currentLayer, layer_names[i])
# run utils/utils_receptivefield.py