Recently, I gave Neural Compute Stick 2 from my professor,
After a lot of trial and error, I have configured the environment.
I got all the information from Intel official site.
sudo python3 mo_tf.py \ --input_model /home/leehanbeen/PycharmProjects/TypeClassifier/inference_graph_type.pb \ --input_shape "[1, 64, 128, 3]" --input "input"
I have successfully converted the pb file to the IR (.xml, .bin) file via model_optimizer and wanted to apply it to the raspberry pi.
import tensorflow as tf import cv2 import numpy as np BIN_PATH = '/home/pi/Downloads/inference_graph_type.bin' XML_PATH = '/home/pi/Downloads/inference_graph_type.xml' IMAGE_PATH = '/home/pi/Downloads/plate(110).jpg_2.jpg' #naming miss.. :( net = cv2.dnn.readNet(XML_PATH, BIN_PATH) net.setPreferableTarget(cv2.dnn.DNN_TARGET_MYRIAD) frame = cv2.imread(IMAGE_PATH) frame = cv2.resize(frame, (128, 64)) blob = cv2.dnn.blobFromImage(frame, size=(128, 64), ddepth=cv2.CV_8U) net.setInput(blob) out = net.forward() out = out.reshape(-1) print(out) print(np.max(out)) print(np.argmax(out))
This source works very well, but It's too slow. When I give (128, 64, 3) image as input to model, inference time is 4.7 seconds
[0.0128479 0.2097168 0.76416016 0.00606918 0.00246811 0.00198746 0.00129604 0.00117588] 0.76416016 2
When I gave a smaller image(40, 40, 1) than this image, the time was rather infinitely slow.
I followed all the procedures as well as on the official Intel home page. Why is the inference time so slow? It's just a very simple classification model using CNN