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TFLite_detection_image.py
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TFLite_detection_image.py
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######## Webcam Object Detection Using Tensorflow-trained Classifier #########
#
# Author: Evan Juras
# Date: 11/11/22
# Description:
# This program uses a TensorFlow Lite object detection model to perform object
# detection on an image or a folder full of images. It draws boxes and scores
# around the objects of interest in each image.
#
# This code is based off the TensorFlow Lite image classification example at:
# https://github.com/tensorflow/tensorflow/blob/master/tensorflow/lite/examples/python/label_image.py
#
# I added my own method of drawing boxes and labels using OpenCV.
# Import packages
import os
import argparse
import cv2
import numpy as np
import sys
import glob
import importlib.util
# Define and parse input arguments
parser = argparse.ArgumentParser()
parser.add_argument('--modeldir', help='Folder the .tflite file is located in',
required=True)
parser.add_argument('--graph', help='Name of the .tflite file, if different than detect.tflite',
default='detect.tflite')
parser.add_argument('--labels', help='Name of the labelmap file, if different than labelmap.txt',
default='labelmap.txt')
parser.add_argument('--threshold', help='Minimum confidence threshold for displaying detected objects',
default=0.5)
parser.add_argument('--image', help='Name of the single image to perform detection on. To run detection on multiple images, use --imagedir',
default=None)
parser.add_argument('--imagedir', help='Name of the folder containing images to perform detection on. Folder must contain only images.',
default=None)
parser.add_argument('--save_results', help='Save labeled images and annotation data to a results folder',
action='store_true')
parser.add_argument('--noshow_results', help='Don\'t show result images (only use this if --save_results is enabled)',
action='store_false')
parser.add_argument('--edgetpu', help='Use Coral Edge TPU Accelerator to speed up detection',
action='store_true')
args = parser.parse_args()
# Parse user inputs
MODEL_NAME = args.modeldir
GRAPH_NAME = args.graph
LABELMAP_NAME = args.labels
min_conf_threshold = float(args.threshold)
use_TPU = args.edgetpu
save_results = args.save_results # Defaults to False
show_results = args.noshow_results # Defaults to True
IM_NAME = args.image
IM_DIR = args.imagedir
# If both an image AND a folder are specified, throw an error
if (IM_NAME and IM_DIR):
print('Error! Please only use the --image argument or the --imagedir argument, not both. Issue "python TFLite_detection_image.py -h" for help.')
sys.exit()
# If neither an image or a folder are specified, default to using 'test1.jpg' for image name
if (not IM_NAME and not IM_DIR):
IM_NAME = 'test1.jpg'
# Import TensorFlow libraries
# If tflite_runtime is installed, import interpreter from tflite_runtime, else import from regular tensorflow
# If using Coral Edge TPU, import the load_delegate library
pkg = importlib.util.find_spec('tflite_runtime')
if pkg:
from tflite_runtime.interpreter import Interpreter
if use_TPU:
from tflite_runtime.interpreter import load_delegate
else:
from tensorflow.lite.python.interpreter import Interpreter
if use_TPU:
from tensorflow.lite.python.interpreter import load_delegate
# If using Edge TPU, assign filename for Edge TPU model
if use_TPU:
# If user has specified the name of the .tflite file, use that name, otherwise use default 'edgetpu.tflite'
if (GRAPH_NAME == 'detect.tflite'):
GRAPH_NAME = 'edgetpu.tflite'
# Get path to current working directory
CWD_PATH = os.getcwd()
# Define path to images and grab all image filenames
if IM_DIR:
PATH_TO_IMAGES = os.path.join(CWD_PATH,IM_DIR)
images = glob.glob(PATH_TO_IMAGES + '/*.jpg') + glob.glob(PATH_TO_IMAGES + '/*.png') + glob.glob(PATH_TO_IMAGES + '/*.bmp')
if save_results:
RESULTS_DIR = IM_DIR + '_results'
elif IM_NAME:
PATH_TO_IMAGES = os.path.join(CWD_PATH,IM_NAME)
images = glob.glob(PATH_TO_IMAGES)
if save_results:
RESULTS_DIR = 'results'
# Create results directory if user wants to save results
if save_results:
RESULTS_PATH = os.path.join(CWD_PATH,RESULTS_DIR)
if not os.path.exists(RESULTS_PATH):
os.makedirs(RESULTS_PATH)
# Path to .tflite file, which contains the model that is used for object detection
PATH_TO_CKPT = os.path.join(CWD_PATH,MODEL_NAME,GRAPH_NAME)
# Path to label map file
PATH_TO_LABELS = os.path.join(CWD_PATH,MODEL_NAME,LABELMAP_NAME)
# Load the label map
with open(PATH_TO_LABELS, 'r') as f:
labels = [line.strip() for line in f.readlines()]
# Have to do a weird fix for label map if using the COCO "starter model" from
# https://www.tensorflow.org/lite/models/object_detection/overview
# First label is '???', which has to be removed.
if labels[0] == '???':
del(labels[0])
# Load the Tensorflow Lite model.
# If using Edge TPU, use special load_delegate argument
if use_TPU:
interpreter = Interpreter(model_path=PATH_TO_CKPT,
experimental_delegates=[load_delegate('libedgetpu.so.1.0')])
print(PATH_TO_CKPT)
else:
interpreter = Interpreter(model_path=PATH_TO_CKPT)
interpreter.allocate_tensors()
# Get model details
input_details = interpreter.get_input_details()
output_details = interpreter.get_output_details()
height = input_details[0]['shape'][1]
width = input_details[0]['shape'][2]
floating_model = (input_details[0]['dtype'] == np.float32)
input_mean = 127.5
input_std = 127.5
# Check output layer name to determine if this model was created with TF2 or TF1,
# because outputs are ordered differently for TF2 and TF1 models
outname = output_details[0]['name']
if ('StatefulPartitionedCall' in outname): # This is a TF2 model
boxes_idx, classes_idx, scores_idx = 1, 3, 0
else: # This is a TF1 model
boxes_idx, classes_idx, scores_idx = 0, 1, 2
# Loop over every image and perform detection
for image_path in images:
# Load image and resize to expected shape [1xHxWx3]
image = cv2.imread(image_path)
image_rgb = cv2.cvtColor(image, cv2.COLOR_BGR2RGB)
imH, imW, _ = image.shape
image_resized = cv2.resize(image_rgb, (width, height))
input_data = np.expand_dims(image_resized, axis=0)
# Normalize pixel values if using a floating model (i.e. if model is non-quantized)
if floating_model:
input_data = (np.float32(input_data) - input_mean) / input_std
# Perform the actual detection by running the model with the image as input
interpreter.set_tensor(input_details[0]['index'],input_data)
interpreter.invoke()
# Retrieve detection results
boxes = interpreter.get_tensor(output_details[boxes_idx]['index'])[0] # Bounding box coordinates of detected objects
classes = interpreter.get_tensor(output_details[classes_idx]['index'])[0] # Class index of detected objects
scores = interpreter.get_tensor(output_details[scores_idx]['index'])[0] # Confidence of detected objects
detections = []
# Loop over all detections and draw detection box if confidence is above minimum threshold
for i in range(len(scores)):
if ((scores[i] > min_conf_threshold) and (scores[i] <= 1.0)):
# Get bounding box coordinates and draw box
# Interpreter can return coordinates that are outside of image dimensions, need to force them to be within image using max() and min()
ymin = int(max(1,(boxes[i][0] * imH)))
xmin = int(max(1,(boxes[i][1] * imW)))
ymax = int(min(imH,(boxes[i][2] * imH)))
xmax = int(min(imW,(boxes[i][3] * imW)))
cv2.rectangle(image, (xmin,ymin), (xmax,ymax), (10, 255, 0), 2)
# Draw label
object_name = labels[int(classes[i])] # Look up object name from "labels" array using class index
label = '%s: %d%%' % (object_name, int(scores[i]*100)) # Example: 'person: 72%'
labelSize, baseLine = cv2.getTextSize(label, cv2.FONT_HERSHEY_SIMPLEX, 0.7, 2) # Get font size
label_ymin = max(ymin, labelSize[1] + 10) # Make sure not to draw label too close to top of window
cv2.rectangle(image, (xmin, label_ymin-labelSize[1]-10), (xmin+labelSize[0], label_ymin+baseLine-10), (255, 255, 255), cv2.FILLED) # Draw white box to put label text in
cv2.putText(image, label, (xmin, label_ymin-7), cv2.FONT_HERSHEY_SIMPLEX, 0.7, (0, 0, 0), 2) # Draw label text
detections.append([object_name, scores[i], xmin, ymin, xmax, ymax])
# All the results have been drawn on the image, now display the image
if show_results:
cv2.imshow('Object detector', image)
# Press any key to continue to next image, or press 'q' to quit
if cv2.waitKey(0) == ord('q'):
break
# Save the labeled image to results folder if desired
if save_results:
# Get filenames and paths
image_fn = os.path.basename(image_path)
image_savepath = os.path.join(CWD_PATH,RESULTS_DIR,image_fn)
base_fn, ext = os.path.splitext(image_fn)
txt_result_fn = base_fn +'.txt'
txt_savepath = os.path.join(CWD_PATH,RESULTS_DIR,txt_result_fn)
# Save image
cv2.imwrite(image_savepath, image)
# Write results to text file
# (Using format defined by https://github.com/Cartucho/mAP, which will make it easy to calculate mAP)
with open(txt_savepath,'w') as f:
for detection in detections:
f.write('%s %.4f %d %d %d %d\n' % (detection[0], detection[1], detection[2], detection[3], detection[4], detection[5]))
# Clean up
cv2.destroyAllWindows()