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computeAngleLoss.py
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computeAngleLoss.py
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import numpy as np
import math
with open("modelFood/modelSettings.txt") as f:
modelSettings = f.readlines()
# print(modelSettings)
use_triangle = False if (modelSettings[0].strip().split(":")[1] == "False") else True
phase="val"
if(phase=="train"):
a=np.load("foodData/src_angle_200.npy")
a=(np.array(a[:20000]))
elif(phase=="val"):
a = np.load("foodData/src_angle_200.npy")
a = (np.array(a[20000:]))
l= np.load("foodData/src_angleLabel_200.npy")
l= (np.array(l[20000:]))
elif(phase=="infer"):
a=np.load("foodData/doinfer.npy")
angle1Loss=np.load("results/npyRes/ang1Loss.npy")
angle2Loss=np.load("results/npyRes/ang2Loss.npy")
print("test:", len(angle1Loss))
if(use_triangle):
for i in range(len(angle1Loss)):
for j in range(len(angle1Loss[i])):
angle1Loss[i][j]= min( abs(angle1Loss[i][j]), 360- abs(angle1Loss[i][j]) )
for i in range(len(angle2Loss)):
for j in range(len(angle2Loss[i])):
angle2Loss[i][j]= min(abs(angle2Loss[i][j]), 360- abs(angle2Loss[i][j]) )
thefile = open('./debug.txt', 'w')
num=0
loss1L1=0
loss1L2=0
loss2L1=0
loss2L2=0
for i in range(len(a)):
# loss1L1 = 0
# loss1L2 = 0
# loss2L1 = 0
# loss2L2 = 0
# num=0
#thefile.write("pred angle2: " + "%s\n" % angle2Loss[i])
for j in range(len(a[i])):
num=num+1
loss1L1=loss1L1+ abs( angle1Loss[i][j])
#print(loss1L1)
loss1L2=loss1L2+angle1Loss[i][j]**2
loss2L1 = loss2L1 + abs(angle2Loss[i][j])
#thefile.write("pred angle2: " + "%s\n" % (str(loss2L1)+" "+ str(abs(angle2Loss[i][j]))))
loss2L2 = loss2L2 + angle2Loss[i][j] ** 2
# print("overall angle1 l1 loss", loss1L1/num)
# print("overall angle2 l1 loss", loss2L1/num)
# print("overall angle1 l2 loss", loss1L2/num)
# print("overall angle2 l2 loss", loss2L2/num)
# print("-----------------------",i)
print("overall angle1 l1 loss", loss1L1/num)
print("overall angle2 l1 loss", loss2L1/num)
print("overall angle1 l2 loss", loss1L2/num)
print("overall angle2 l2 loss", loss2L2/num)
# overall angle1 l1 loss 30.0361517506
# overall angle2 l1 loss 47.2247654951
# overall angle1 l2 loss 3189.6693917
# overall angle2 l2 loss 6352.57799234
num = 0
loss1L1 = 0
loss1L2 = 0
loss2L1 = 0
loss2L2 = 0
for i in range(len(l)):
# loss1L1 = 0
# loss1L2 = 0
# loss2L1 = 0
# loss2L2 = 0
# num=0
# thefile.write("pred angle2: " + "%s\n" % angle2Loss[i])
for j in range(len(l[i])):
#print(l[i][j])
if(l[i][j]=='T'):
num = num + 1
loss1L1 = loss1L1 + abs(angle1Loss[i][j])
# print(loss1L1)
loss1L2 = loss1L2 + angle1Loss[i][j] ** 2
loss2L1 = loss2L1 + abs(angle2Loss[i][j])
# thefile.write("pred angle2: " + "%s\n" % (str(loss2L1)+" "+ str(abs(angle2Loss[i][j]))))
loss2L2 = loss2L2 + angle2Loss[i][j] ** 2
# print("overall angle1 l1 loss", loss1L1/num)
# print("overall angle2 l1 loss", loss2L1/num)
# print("overall angle1 l2 loss", loss1L2/num)
# print("overall angle2 l2 loss", loss2L2/num)
# print("-----------------------",i)
print("overall angle1 l1 loss_T", loss1L1 / num)
print("overall angle2 l1 loss_T", loss2L1 / num)
print("overall angle1 l2 loss_T", loss1L2 / num)
print("overall angle2 l2 loss_T", loss2L2 / num)