yolo_v4_tflite / evaluate.py
SamMorgan
Adding more yolov4-tflite files
20e841b
from absl import app, flags, logging
from absl.flags import FLAGS
import cv2
import os
import shutil
import numpy as np
import tensorflow as tf
from core.yolov4 import filter_boxes
from tensorflow.python.saved_model import tag_constants
import core.utils as utils
from core.config import cfg
flags.DEFINE_string('weights', './checkpoints/yolov4-416',
'path to weights file')
flags.DEFINE_string('framework', 'tf', 'select model type in (tf, tflite, trt)'
'path to weights file')
flags.DEFINE_string('model', 'yolov4', 'yolov3 or yolov4')
flags.DEFINE_boolean('tiny', False, 'yolov3 or yolov3-tiny')
flags.DEFINE_integer('size', 416, 'resize images to')
flags.DEFINE_string('annotation_path', "./data/dataset/val2017.txt", 'annotation path')
flags.DEFINE_string('write_image_path', "./data/detection/", 'write image path')
flags.DEFINE_float('iou', 0.5, 'iou threshold')
flags.DEFINE_float('score', 0.25, 'score threshold')
def main(_argv):
INPUT_SIZE = FLAGS.size
STRIDES, ANCHORS, NUM_CLASS, XYSCALE = utils.load_config(FLAGS)
CLASSES = utils.read_class_names(cfg.YOLO.CLASSES)
predicted_dir_path = './mAP/predicted'
ground_truth_dir_path = './mAP/ground-truth'
if os.path.exists(predicted_dir_path): shutil.rmtree(predicted_dir_path)
if os.path.exists(ground_truth_dir_path): shutil.rmtree(ground_truth_dir_path)
if os.path.exists(cfg.TEST.DECTECTED_IMAGE_PATH): shutil.rmtree(cfg.TEST.DECTECTED_IMAGE_PATH)
os.mkdir(predicted_dir_path)
os.mkdir(ground_truth_dir_path)
os.mkdir(cfg.TEST.DECTECTED_IMAGE_PATH)
# Build Model
if FLAGS.framework == 'tflite':
interpreter = tf.lite.Interpreter(model_path=FLAGS.weights)
interpreter.allocate_tensors()
input_details = interpreter.get_input_details()
output_details = interpreter.get_output_details()
print(input_details)
print(output_details)
else:
saved_model_loaded = tf.saved_model.load(FLAGS.weights, tags=[tag_constants.SERVING])
infer = saved_model_loaded.signatures['serving_default']
num_lines = sum(1 for line in open(FLAGS.annotation_path))
with open(cfg.TEST.ANNOT_PATH, 'r') as annotation_file:
for num, line in enumerate(annotation_file):
annotation = line.strip().split()
image_path = annotation[0]
image_name = image_path.split('/')[-1]
image = cv2.imread(image_path)
image = cv2.cvtColor(image, cv2.COLOR_BGR2RGB)
bbox_data_gt = np.array([list(map(int, box.split(','))) for box in annotation[1:]])
if len(bbox_data_gt) == 0:
bboxes_gt = []
classes_gt = []
else:
bboxes_gt, classes_gt = bbox_data_gt[:, :4], bbox_data_gt[:, 4]
ground_truth_path = os.path.join(ground_truth_dir_path, str(num) + '.txt')
print('=> ground truth of %s:' % image_name)
num_bbox_gt = len(bboxes_gt)
with open(ground_truth_path, 'w') as f:
for i in range(num_bbox_gt):
class_name = CLASSES[classes_gt[i]]
xmin, ymin, xmax, ymax = list(map(str, bboxes_gt[i]))
bbox_mess = ' '.join([class_name, xmin, ymin, xmax, ymax]) + '\n'
f.write(bbox_mess)
print('\t' + str(bbox_mess).strip())
print('=> predict result of %s:' % image_name)
predict_result_path = os.path.join(predicted_dir_path, str(num) + '.txt')
# Predict Process
image_size = image.shape[:2]
# image_data = utils.image_preprocess(np.copy(image), [INPUT_SIZE, INPUT_SIZE])
image_data = cv2.resize(np.copy(image), (INPUT_SIZE, INPUT_SIZE))
image_data = image_data / 255.
image_data = image_data[np.newaxis, ...].astype(np.float32)
if FLAGS.framework == 'tflite':
interpreter.set_tensor(input_details[0]['index'], image_data)
interpreter.invoke()
pred = [interpreter.get_tensor(output_details[i]['index']) for i in range(len(output_details))]
if FLAGS.model == 'yolov4' and FLAGS.tiny == True:
boxes, pred_conf = filter_boxes(pred[1], pred[0], score_threshold=0.25)
else:
boxes, pred_conf = filter_boxes(pred[0], pred[1], score_threshold=0.25)
else:
batch_data = tf.constant(image_data)
pred_bbox = infer(batch_data)
for key, value in pred_bbox.items():
boxes = value[:, :, 0:4]
pred_conf = value[:, :, 4:]
boxes, scores, classes, valid_detections = tf.image.combined_non_max_suppression(
boxes=tf.reshape(boxes, (tf.shape(boxes)[0], -1, 1, 4)),
scores=tf.reshape(
pred_conf, (tf.shape(pred_conf)[0], -1, tf.shape(pred_conf)[-1])),
max_output_size_per_class=50,
max_total_size=50,
iou_threshold=FLAGS.iou,
score_threshold=FLAGS.score
)
boxes, scores, classes, valid_detections = [boxes.numpy(), scores.numpy(), classes.numpy(), valid_detections.numpy()]
# if cfg.TEST.DECTECTED_IMAGE_PATH is not None:
# image_result = utils.draw_bbox(np.copy(image), [boxes, scores, classes, valid_detections])
# cv2.imwrite(cfg.TEST.DECTECTED_IMAGE_PATH + image_name, image_result)
with open(predict_result_path, 'w') as f:
image_h, image_w, _ = image.shape
for i in range(valid_detections[0]):
if int(classes[0][i]) < 0 or int(classes[0][i]) > NUM_CLASS: continue
coor = boxes[0][i]
coor[0] = int(coor[0] * image_h)
coor[2] = int(coor[2] * image_h)
coor[1] = int(coor[1] * image_w)
coor[3] = int(coor[3] * image_w)
score = scores[0][i]
class_ind = int(classes[0][i])
class_name = CLASSES[class_ind]
score = '%.4f' % score
ymin, xmin, ymax, xmax = list(map(str, coor))
bbox_mess = ' '.join([class_name, score, xmin, ymin, xmax, ymax]) + '\n'
f.write(bbox_mess)
print('\t' + str(bbox_mess).strip())
print(num, num_lines)
if __name__ == '__main__':
try:
app.run(main)
except SystemExit:
pass