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)
frame = cv2.imread(IMAGE_PATH)
frame = cv2.resize(frame, (128, 64))
blob = cv2.dnn.blobFromImage(frame, size=(128, 64), ddepth=cv2.CV_8U)
out = net.forward()
out = out.reshape(-1)

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]

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


Resolved. Instead of using IE as a backend in OpenCV, Using IE directly, the inference time was shortened from 4.7 seconds to 0.01 seconds. But there is still a problem. The inference for color images (128, 64) is normal, while the grayscale image is still ending at the end of infinite time.

I have written the relevant source code on my GITHUB

It is in Korean, but you can see only the source at the bottom.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.