# Copyright 2014 The Android Open Source Project # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import os.path import its.caps import its.device import its.image import its.objects import its.target from matplotlib import pylab import matplotlib.pyplot import numpy BURST_LEN = 50 BURSTS = 5 COLORS = ["R", "G", "B"] FRAMES = BURST_LEN * BURSTS NAME = os.path.basename(__file__).split(".")[0] SPREAD_THRESH = 0.03 def main(): """Take long bursts of images and check that they're all identical. Assumes a static scene. Can be used to idenfity if there are sporadic frames that are processed differently or have artifacts. Uses manual capture settings. """ with its.device.ItsSession() as cam: # Capture at the smallest resolution. props = cam.get_camera_properties() its.caps.skip_unless(its.caps.compute_target_exposure(props) and its.caps.per_frame_control(props)) debug = its.caps.debug_mode() _, fmt = its.objects.get_fastest_manual_capture_settings(props) e, s = its.target.get_target_exposure_combos(cam)["minSensitivity"] req = its.objects.manual_capture_request(s, e) w, h = fmt["width"], fmt["height"] # Capture bursts of YUV shots. # Get the mean values of a center patch for each. # Also build a 4D array, which is an array of all RGB images. r_means = [] g_means = [] b_means = [] imgs = numpy.empty([FRAMES, h, w, 3]) for j in range(BURSTS): caps = cam.do_capture([req]*BURST_LEN, [fmt]) for i, cap in enumerate(caps): n = j*BURST_LEN + i imgs[n] = its.image.convert_capture_to_rgb_image(cap) tile = its.image.get_image_patch(imgs[n], 0.45, 0.45, 0.1, 0.1) means = its.image.compute_image_means(tile) r_means.append(means[0]) g_means.append(means[1]) b_means.append(means[2]) # Dump all images if debug if debug: print "Dumping images" for i in range(FRAMES): its.image.write_image(imgs[i], "%s_frame%03d.jpg"%(NAME, i)) # The mean image. img_mean = imgs.mean(0) its.image.write_image(img_mean, "%s_mean.jpg"%(NAME)) # Plot means vs frames frames = range(FRAMES) pylab.title(NAME) pylab.plot(frames, r_means, "-ro") pylab.plot(frames, g_means, "-go") pylab.plot(frames, b_means, "-bo") pylab.ylim([0, 1]) pylab.xlabel("frame number") pylab.ylabel("RGB avg [0, 1]") matplotlib.pyplot.savefig("%s_plot_means.png" % (NAME)) # PASS/FAIL based on center patch similarity. for plane, means in enumerate([r_means, g_means, b_means]): spread = max(means) - min(means) msg = "%s spread: %.5f, SPREAD_THRESH: %.3f" % ( COLORS[plane], spread, SPREAD_THRESH) print msg assert spread < SPREAD_THRESH, msg if __name__ == "__main__": main()