import numpy as np
import sys
import cv2
from rknn.api import RKNN
DEFAULT_RKNN_PATH = '../model/clip_images.rknn'
DEFAULT_QUANT = False
IMAGE_SIZE=[224, 224]
def parse_arg():
if len(sys.argv) < 3:
print("Usage: python3 {} onnx_model_path [platform] [dtype(optional)] [output_rknn_path(optional)]".format(sys.argv[0]))
print(" platform choose from [rk3562, rk3566, rk3568, rk3576, rk3588, rv1126b]")
print(" dtype choose from [fp]")
exit(1)
model_path = sys.argv[1]
platform = sys.argv[2]
do_quant = DEFAULT_QUANT
if len(sys.argv) > 3:
model_type = sys.argv[3]
if model_type not in ['fp']:
print("ERROR: Invalid model type: {}".format(model_type))
exit(1)
if len(sys.argv) > 4:
output_path = sys.argv[4]
else:
output_path = DEFAULT_RKNN_PATH
return model_path, platform, do_quant, output_path
if __name__ == '__main__':
model_path, platform, do_quant, output_path = parse_arg()
rknn = RKNN(verbose=False)
print('--> Config model')
rknn.config(target_platform=platform,
mean_values=[[0.48145466*255, 0.4578275*255, 0.40821073*255]],
std_values=[[0.26862954*255, 0.26130258*255, 0.27577711*255]])
print('done')
print('--> Loading model')
ret = rknn.load_onnx(model=model_path,
inputs=['pixel_values'],
input_size_list=[[1, 3, IMAGE_SIZE[0], IMAGE_SIZE[1]]])
if ret != 0:
print('Load model failed!')
exit(ret)
print('done')
print('--> Building model')
ret = rknn.build(do_quantization=do_quant)
if ret != 0:
print('Build model failed!')
exit(ret)
print('done')
print('--> Export rknn model')
ret = rknn.export_rknn(output_path)
if ret != 0:
print('Export rknn model failed!')
exit(ret)
print('done')
rknn.release()