Beispiel #1
0
def runIt():
    print("track_qr_code")
    cam5procs.logLine("track_qr_code")
    clock = time.clock()
    framecount = 0
    ledState = 0
    ledCounter = 0
    while cam5procs.receive_packet() == 0:
        ledCounter += 1
        framecount += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        clock.tick()
        code = "TBD!!"
        tracked = [
            framecount & 0xff, 0,
            ord(code[0]),
            ord(code[1]),
            ord(code[2]),
            ord(code[3]),
            ord(code[4])
        ]
        cam5procs.send_packet(tracked, 7, cam5procs.TRK_BLOB)
        #print (tracked)
        #if<
    #while<

    return True
Beispiel #2
0
def runIt():
    print("track_eye")
    cam5procs.logLine("track_eye")
    clock = time.clock()
    framecount = 0
    ledState = 0
    ledCounter = 0
    sensor.set_framesize(sensor.HQVGA)
    sensor.set_pixformat(sensor.GRAYSCALE)
    face_cascade = image.HaarCascade("frontalface", stages=25)
    eyes_cascade = image.HaarCascade("eye", stages=24)
    #print(face_cascade,eyes_cascade)
    while not cam5procs.receive_packet():
        ledCounter += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        clock.tick()
        img = sensor.snapshot()  # Capture snapshot
        # Find faces.
        # Note: Lower scale factor scales-down the image more and detects smaller objects.
        # Higher threshold results in a higher detection rate, with more false positives.
        faces = img.find_features(face_cascade, threshold=0.75, scale=1.35)
        # Draw objects
        framecount += 1
        for face in faces[:4]:
            img.draw_rectangle(face)
            # Now find eyes within each face.
            # Note: Use a higher threshold here (more detections) and lower scale (to find small objects)
            eyes = img.find_features(eyes_cascade,
                                     threshold=0.5,
                                     scale=1.2,
                                     roi=face)
            for e in eyes[:2]:
                img.draw_rectangle(e)
                tracked = [
                    framecount & 0xff, 0, 0, e[0], e[1], e[0] + e[2],
                    e[1] + e[3]
                ]
                #print("fps: ", clock.fps(),tracked)
                cam5procs.send_packet(tracked, 7, cam5procs.TRK_BLOB)
    # Print FPS.
    # Note: Actual FPS is higher, streaming the FB makes it slower.
    return True
Beispiel #3
0
def runIt_00():
    print("track_qr_code")
    cam5procs.logLine("track_qr_code")
    clock = time.clock()
    framecount = 0
    ledState = 0
    ledCounter = 0
    sensor.reset()
    sensor.set_pixformat(sensor.GRAYSCALE)
    sensor.set_framesize(sensor.VGA)
    sensor.set_windowing(
        (240, 240))  # look at center 240x240 pixels of the VGA resolution.
    sensor.skip_frames(30)
    sensor.set_auto_gain(
        False)  # must turn this off to prevent image washout...

    while cam5procs.receive_packet() == 0:
        ledCounter += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        clock.tick()
        img = sensor.snapshot()
        if (img != None):
            framecount += 1
            for code in img.find_qrcodes():
                tracked = [
                    framecount & 0xff, 0,
                    ord(code[4][0]),
                    ord(code[4][1]),
                    ord(code[4][2]),
                    ord(code[4][3]),
                    ord(code[4][4])
                ]
                cam5procs.send_packet(tracked, 7, cam5procs.TRK_QRCODE)
                img.draw_string(10, 10, code[4], 0)
            #for<
        #if<
    #while<

    return True
Beispiel #4
0
def runIt():
    framecount = 0
    ledState = 0
    ledCounter = 0
    print("track_blob")
    cam5procs.logLine("tracking blob")
    clock = time.clock()

    lastBlob = None
    clock.tick()  # Track elapsed milliseconds between snapshots().
    sensor.reset()
    sensor.set_pixformat(sensor.RGB565)
    sensor.set_framesize(sensor.HQVGA)
    sensor.skip_frames(5)
    sensor.set_auto_whitebal(False)
    while cam5procs.receive_packet() == 0:
        ledCounter += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        img = sensor.snapshot()
        if (img != None):
            blobs = img.find_blobs([
                colour.map[0], colour.map[1], colour.map[2], colour.map[3],
                colour.map[4], colour.map[5], colour.map[6], colour.map[7]
            ])
            sorted_blobs = sorted(blobs, key=getKey, reverse=True)
            if (sorted_blobs):
                framecount += 1
                for blob in sorted_blobs[:8]:
                    img.draw_rectangle(blob.rect())
                    img.draw_cross(blob.cx(), blob.cy())
                    tracked = [
                        framecount & 0xff, 0, blob[8], blob[0], blob[1],
                        blob[0] + blob[2], blob[1] + blob[3]
                    ]
                    cam5procs.send_packet(tracked, 7, cam5procs.TRK_BLOB)
                #for<
            #if<
        #if<
        cam5procs.ledShowColour([0, 0, 0])
Beispiel #5
0
def runIt():
    framecount = 0
    print("track_line")
    cam5procs.logLine("tracking line")
    ledState = 0
    ledCounter = 0
    sensor.reset()
    sensor.set_pixformat(sensor.GRAYSCALE)
    sensor.set_framesize(sensor.HQVGA)
    sensor.skip_frames(30)
    sensor.set_auto_gain(False)
    sensor.set_auto_whitebal(False)
    GRAYSCALE_THRESHOLD = [(0, 64)]
    ROIS = [(0, i * 15, 250, 15) for i in range(8)]

    while not cam5procs.receive_packet():
        ledCounter += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        img = sensor.snapshot()
        if (img != None):
            framecount += 1
            for i, r in enumerate(ROIS):
                blobs = img.find_blobs(GRAYSCALE_THRESHOLD, roi=r, merge=True)
                if blobs:
                    largest_blob = max(blobs, key=lambda b: b.pixels())
                    tracked = [
                        framecount & 0xff, 0, i,
                        largest_blob.rect()[0],
                        largest_blob.rect()[1],
                        largest_blob.rect()[0] + largest_blob.rect()[2],
                        largest_blob.rect()[1] + largest_blob.rect()[3]
                    ]
                    cam5procs.send_packet(tracked, 7, cam5procs.TRK_BLOB)
                    img.draw_rectangle(largest_blob.rect())
                    img.draw_cross(largest_blob.cx(), largest_blob.cy())
Beispiel #6
0
def runIt():
    print("track_face")
    cam5procs.logLine("track_face")
    clock = time.clock()
    ledState = 0
    ledCounter = 0
    framecount = 0
    sensor.set_framesize(sensor.HQVGA)
    sensor.set_pixformat(sensor.GRAYSCALE)
    face_cascade = image.HaarCascade("frontalface", stages=25)
    print(face_cascade)
    while not cam5procs.receive_packet():
        ledCounter += 1
        if ((ledCounter % 5) == 0):
            if (ledState == 0):
                ledState = 1
                cam5procs.ledShowColour([0, 0, 255])
            else:
                ledState = 0
                cam5procs.ledShowColour([0, 0, 0])
        clock.tick()
        img = sensor.snapshot()  # Capture snapshot
        # Find faces.
        # Note: Lower scale factor scales-down the image more and detects smaller objects.
        # Higher threshold results in a higher detection rate, with more false positives.
        faces = img.find_features(face_cascade, threshold=0.75, scale=1.35)
        # Draw objects
        framecount += 1
        for r in faces[:8]:
            img.draw_rectangle(r)
            tracked = [
                framecount & 0xff, 0, 0, r[0], r[1], r[0] + r[2], r[1] + r[3]
            ]
            cam5procs.send_packet(tracked, 7, cam5procs.TRK_BLOB)
    # Print FPS.
    # Note: Actual FPS is higher, streaming the FB makes it slower.
    return True
Beispiel #7
0
def runIt ():
    #print ("send_ccd_id");
    l = list()
    l.append(sensor.get_id())
    cam5procs.send_packet(l,len(l),CCDID)
Beispiel #8
0
def runIt ():
    #print ("send_ver")
    cam5procs.send_packet(sys.version.encode('ascii'),len(sys.version.encode('ascii')),ENGNVER)
Beispiel #9
0
def runIt():
    #print ("send model")
    cam5procs.send_packet(sys.platform.encode('ascii'),
                          len(sys.platform.encode('ascii')), MODEL)