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Python
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2025-05-10 21:58:58 +08:00
import os
import urllib
import traceback
import time
import sys
import numpy as np
import cv2
from rknn.api import RKNN
import urllib.request
ONNX_MODEL = 'resnet50v2.onnx'
RKNN_MODEL = 'resnet50v2.rknn'
def show_outputs(outputs):
output = outputs
output_sorted = sorted(output, reverse=True)
top5_str = 'resnet50v2\n-----TOP 5-----\n'
for i in range(5):
value = output_sorted[i]
index = np.where(output == value)
for j in range(len(index)):
if (i + j) >= 5:
break
if value > 0:
topi = '{}: {}\n'.format(index[j], value)
else:
topi = '-1: 0.0\n'
top5_str += topi
print(top5_str)
def readable_speed(speed):
speed_bytes = float(speed)
speed_kbytes = speed_bytes / 1024
if speed_kbytes > 1024:
speed_mbytes = speed_kbytes / 1024
if speed_mbytes > 1024:
speed_gbytes = speed_mbytes / 1024
return "{:.2f} GB/s".format(speed_gbytes)
else:
return "{:.2f} MB/s".format(speed_mbytes)
else:
return "{:.2f} KB/s".format(speed_kbytes)
def show_progress(blocknum, blocksize, totalsize):
speed = (blocknum * blocksize) / (time.time() - start_time)
speed_str = " Speed: {}".format(readable_speed(speed))
recv_size = blocknum * blocksize
f = sys.stdout
progress = (recv_size / totalsize)
progress_str = "{:.2f}%".format(progress * 100)
n = round(progress * 50)
s = ('#' * n).ljust(50, '-')
f.write(progress_str.ljust(8, ' ') + '[' + s + ']' + speed_str)
f.flush()
f.write('\r\n')
if __name__ == '__main__':
# Create RKNN object
rknn = RKNN(verbose=True)
# If resnet50v2 does not exist, download it.
# Download address:
# https://s3.amazonaws.com/onnx-model-zoo/resnet/resnet50v2/resnet50v2.onnx
if not os.path.exists(ONNX_MODEL):
print('--> Download {}'.format(ONNX_MODEL))
url = 'https://s3.amazonaws.com/onnx-model-zoo/resnet/resnet50v2/resnet50v2.onnx'
download_file = ONNX_MODEL
try:
start_time = time.time()
urllib.request.urlretrieve(url, download_file, show_progress)
except:
print('Download {} failed.'.format(download_file))
print(traceback.format_exc())
exit(-1)
print('done')
# Pre-process config
print('--> Config model')
rknn.config(mean_values=[123.68, 116.28, 103.53], std_values=[57.38, 57.38, 57.38])
print('done')
# Load model
print('--> Loading model')
ret = rknn.load_onnx(model=ONNX_MODEL)
if ret != 0:
print('Load model failed!')
exit(ret)
print('done')
# Build model
print('--> Building model')
ret = rknn.build(do_quantization=True, dataset='./dataset.txt')
if ret != 0:
print('Build model failed!')
exit(ret)
print('done')
# Accuracy analysis
print('--> Accuracy analysis')
ret = rknn.accuracy_analysis(inputs=['./dog_224x224.jpg'], output_dir='./snapshot')
if ret != 0:
print('Accuracy analysis failed!')
exit(ret)
print('done')
print('float32:')
output = np.genfromtxt('./snapshot/golden/resnetv24_dense0_fwd.txt')
show_outputs(output)
print('quantized:')
output = np.genfromtxt('./snapshot/simulator/resnetv24_dense0_fwd.txt')
show_outputs(output)
rknn.release()