Openmv4 plus运行MobileNetV1 96x96 0.25时错误


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Edge Impulse - OpenMV Image Classification Example

import sensor, image, time, os, tf, uos, gc

sensor.reset() # Reset and initialize the sensor.
sensor.set_pixformat(sensor.RGB565) # Set pixel format to RGB565 (or GRAYSCALE)
sensor.set_framesize(sensor.QVGA) # Set frame size to QVGA (320x240)
sensor.set_windowing((240, 240)) # Set 240x240 window.
sensor.skip_frames(time=2000) # Let the camera adjust.

net = None
labels = None

try:
# load the model, alloc the model file on the heap if we have at least 64K free after loading
net = tf.load(“trained.tflite”, load_to_fb=uos.stat(‘trained.tflite’)[6] > (gc.mem_free() - (64*1024)))
except Exception as e:
print(e)
raise Exception(‘Failed to load “trained.tflite”, did you copy the .tflite and labels.txt file onto the mass-storage device? (’ + str(e) + ‘)’)

try:
labels = [line.rstrip(‘\n’) for line in open(“labels.txt”)]
except Exception as e:
raise Exception(‘Failed to load “labels.txt”, did you copy the .tflite and labels.txt file onto the mass-storage device? (’ + str(e) + ‘)’)

clock = time.clock()
while(True):
clock.tick()

img = sensor.snapshot()

# default settings just do one detection... change them to search the image...
for obj in net.classify(img, min_scale=1.0, scale_mul=0.8, x_overlap=0.5, y_overlap=0.5):
    print("**********\nPredictions at [x=%d,y=%d,w=%d,h=%d]" % obj.rect())
    img.draw_rectangle(obj.rect())
    # This combines the labels and confidence values into a list of tuples
    predictions_list = list(zip(labels, obj.output()))

    for i in range(len(predictions_list)):
        print("%s = %f" % (predictions_list[i][0], predictions_list[i][1]))

Did you copy the files as the exception said to your SD card?