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evaluation.py
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evaluation.py
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import numpy as np
import torch
class AverageMeter(object):
"""Computes and stores the average and current value"""
def __init__(self):
self.reset()
def reset(self):
self.val = 0
self.avg = 0
self.sum = 0
self.count = 0
def update(self, val, n=1):
self.val = val
self.sum += val * n
self.count += n
self.avg = self.sum / self.count
class SegmentationMetric(object):
def __init__(self, numClass):
self.numClass = numClass
self.confusionMatrix = np.zeros((self.numClass,)*2)
def pixelAccuracy(self):
# return all class overall pixel accuracy
# PA = acc = (TP + TN) / (TP + TN + FP + TN)
acc = np.diag(self.confusionMatrix).sum() / self.confusionMatrix.sum()
return acc
def classPixelAccuracy(self):
# return each category pixel accuracy(A more accurate way to call it precision)
# acc = (TP) / TP + FP
classAcc = np.diag(self.confusionMatrix) / self.confusionMatrix.sum(axis=1)
return classAcc # 返回的是一个列表值,如:[0.90, 0.80, 0.96],表示类别1 2 3各类别的预测准确率
def meanPixelAccuracy(self):
classAcc = self.classPixelAccuracy()
meanAcc = np.nanmean(classAcc) # np.nanmean 求平均值,nan表示遇到Nan类型,其值取为0
return meanAcc # 返回单个值,如:np.nanmean([0.90, 0.80, 0.96, nan, nan]) = (0.90 + 0.80 + 0.96) / 3 = 0.89
def meanIntersectionOverUnion(self):
# Intersection = TP Union = TP + FP + FN
# IoU = TP / (TP + FP + FN)
intersection = np.diag(self.confusionMatrix) # 取对角元素的值,返回列表
union = np.sum(self.confusionMatrix, axis=1) + np.sum(self.confusionMatrix, axis=0) - np.diag(self.confusionMatrix) # axis = 1表示混淆矩阵行的值,返回列表; axis = 0表示取混淆矩阵列的值,返回列表
IoU = intersection / union # 返回列表,其值为各个类别的IoU
mIoU = np.nanmean(IoU) # 求各类别IoU的平均
return mIoU
def genConfusionMatrix(self, imgPredict, imgLabel): # 同FCN中score.py的fast_hist()函数
# remove classes from unlabeled pixels in gt image and predict
label = self.numClass * imgLabel + imgPredict
count = np.bincount(label, minlength=self.numClass**2)
confusionMatrix = count.reshape(self.numClass, self.numClass)
return confusionMatrix
def Frequency_Weighted_Intersection_over_Union(self):
# FWIOU = [(TP+FN)/(TP+FP+TN+FN)] *[TP / (TP + FP + FN)]
freq = np.sum(self.confusion_matrix, axis=1) / np.sum(self.confusion_matrix)
iu = np.diag(self.confusion_matrix) / (
np.sum(self.confusion_matrix, axis=1) + np.sum(self.confusion_matrix, axis=0) -
np.diag(self.confusion_matrix))
FWIoU = (freq[freq > 0] * iu[freq > 0]).sum()
return FWIoU
def addBatch(self, imgPredict, imgLabel):
assert imgPredict.shape == imgLabel.shape
self.confusionMatrix += self.genConfusionMatrix(imgPredict, imgLabel)
def reset(self):
self.confusionMatrix = np.zeros((self.numClass, self.numClass))