mirror of https://github.com/AlexeyAB/darknet.git
166 lines
5.0 KiB
Python
166 lines
5.0 KiB
Python
'''
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Created on Feb 20, 2017
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@author: jumabek
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'''
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from os import listdir
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from os.path import isfile, join
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import argparse
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#import cv2
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import numpy as np
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import sys
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import os
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import shutil
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import random
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import math
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width_in_cfg_file = 416.
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height_in_cfg_file = 416.
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def IOU(x,centroids):
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similarities = []
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k = len(centroids)
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for centroid in centroids:
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c_w,c_h = centroid
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w,h = x
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if c_w>=w and c_h>=h:
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similarity = w*h/(c_w*c_h)
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elif c_w>=w and c_h<=h:
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similarity = w*c_h/(w*h + (c_w-w)*c_h)
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elif c_w<=w and c_h>=h:
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similarity = c_w*h/(w*h + c_w*(c_h-h))
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else: #means both w,h are bigger than c_w and c_h respectively
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similarity = (c_w*c_h)/(w*h)
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similarities.append(similarity) # will become (k,) shape
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return np.array(similarities)
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def avg_IOU(X,centroids):
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n,d = X.shape
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sum = 0.
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for i in range(X.shape[0]):
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#note IOU() will return array which contains IoU for each centroid and X[i] // slightly ineffective, but I am too lazy
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sum+= max(IOU(X[i],centroids))
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return sum/n
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def write_anchors_to_file(centroids,X,anchor_file):
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f = open(anchor_file,'w')
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anchors = centroids.copy()
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print(anchors.shape)
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for i in range(anchors.shape[0]):
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anchors[i][0]*=width_in_cfg_file/32.
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anchors[i][1]*=height_in_cfg_file/32.
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widths = anchors[:,0]
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sorted_indices = np.argsort(widths)
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print('Anchors = ', anchors[sorted_indices])
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for i in sorted_indices[:-1]:
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f.write('%0.2f,%0.2f, '%(anchors[i,0],anchors[i,1]))
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#there should not be comma after last anchor, that's why
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f.write('%0.2f,%0.2f\n'%(anchors[sorted_indices[-1:],0],anchors[sorted_indices[-1:],1]))
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f.write('%f\n'%(avg_IOU(X,centroids)))
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print()
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def kmeans(X,centroids,eps,anchor_file):
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N = X.shape[0]
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iterations = 0
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k,dim = centroids.shape
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prev_assignments = np.ones(N)*(-1)
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iter = 0
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old_D = np.zeros((N,k))
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while True:
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D = []
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iter+=1
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for i in range(N):
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d = 1 - IOU(X[i],centroids)
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D.append(d)
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D = np.array(D) # D.shape = (N,k)
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print("iter {}: dists = {}".format(iter,np.sum(np.abs(old_D-D))))
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#assign samples to centroids
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assignments = np.argmin(D,axis=1)
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if (assignments == prev_assignments).all() :
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print("Centroids = ",centroids)
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write_anchors_to_file(centroids,X,anchor_file)
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return
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#calculate new centroids
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centroid_sums=np.zeros((k,dim),np.float)
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for i in range(N):
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centroid_sums[assignments[i]]+=X[i]
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for j in range(k):
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centroids[j] = centroid_sums[j]/(np.sum(assignments==j))
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prev_assignments = assignments.copy()
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old_D = D.copy()
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def main(argv):
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parser = argparse.ArgumentParser()
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parser.add_argument('-filelist', default = '\\path\\to\\voc\\filelist\\train.txt',
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help='path to filelist\n' )
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parser.add_argument('-output_dir', default = 'generated_anchors/anchors', type = str,
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help='Output anchor directory\n' )
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parser.add_argument('-num_clusters', default = 0, type = int,
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help='number of clusters\n' )
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args = parser.parse_args()
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if not os.path.exists(args.output_dir):
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os.mkdir(args.output_dir)
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f = open(args.filelist)
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lines = [line.rstrip('\n') for line in f.readlines()]
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annotation_dims = []
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size = np.zeros((1,1,3))
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for line in lines:
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#line = line.replace('images','labels')
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#line = line.replace('img1','labels')
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line = line.replace('JPEGImages','labels')
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line = line.replace('.jpg','.txt')
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line = line.replace('.png','.txt')
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print(line)
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f2 = open(line)
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for line in f2.readlines():
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line = line.rstrip('\n')
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w,h = line.split(' ')[3:]
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#print(w,h)
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annotation_dims.append(tuple(map(float,(w,h))))
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annotation_dims = np.array(annotation_dims)
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eps = 0.005
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if args.num_clusters == 0:
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for num_clusters in range(1,11): #we make 1 through 10 clusters
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anchor_file = join( args.output_dir,'anchors%d.txt'%(num_clusters))
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indices = [ random.randrange(annotation_dims.shape[0]) for i in range(num_clusters)]
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centroids = annotation_dims[indices]
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kmeans(annotation_dims,centroids,eps,anchor_file)
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print('centroids.shape', centroids.shape)
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else:
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anchor_file = join( args.output_dir,'anchors%d.txt'%(args.num_clusters))
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indices = [ random.randrange(annotation_dims.shape[0]) for i in range(args.num_clusters)]
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centroids = annotation_dims[indices]
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kmeans(annotation_dims,centroids,eps,anchor_file)
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print('centroids.shape', centroids.shape)
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if __name__=="__main__":
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main(sys.argv)
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