Gamma correction
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@ -3,9 +3,8 @@
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import sys
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import math
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import os
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import webp
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import cv2
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import pandas as pd
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import numpy as np
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from matplotlib import pyplot as plt
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@ -14,20 +13,85 @@ dataset_path = sys.argv[1]
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print(dataset_path)
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timestamps = np.loadtxt(dataset_path + '/mav0/cam0/data.csv', usecols=[0], delimiter=',', dtype=np.int64)
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exposures = np.loadtxt(dataset_path + '/mav0/cam0/exposure.csv', usecols=[1], delimiter=',', dtype=np.int64)
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exposures = np.loadtxt(dataset_path + '/mav0/cam0/exposure.csv', usecols=[1], delimiter=',', dtype=np.int64).astype(np.float64) * 1e-6
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pixel_avgs = list()
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if timestamps.shape[0] != exposures.shape[0]: print("timestamps and exposures do not match")
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imgs = []
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# check image data.
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img_extensions = ['.png', '.jpg', '.webp']
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for timestamp in timestamps:
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path = dataset_path + '/mav0/cam0/data/' + str(timestamp)
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img = webp.imread(dataset_path + '/mav0/cam0/data/' + str(timestamp) + '.webp')
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img = cv2.imread(dataset_path + '/mav0/cam0/data/' + str(timestamp) + '.webp', cv2.IMREAD_GRAYSCALE)[:,:,0]
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imgs.append(img)
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pixel_avgs.append(np.mean(img))
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plt.plot(exposures, pixel_avgs)
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plt.ylabel('Img Mean')
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plt.xlabel('Exposure')
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imgs = np.array(imgs)
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print(imgs.shape)
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print(imgs.dtype)
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num_pixels_by_intensity = np.bincount(imgs.flat)
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print('num_pixels_by_intensity', num_pixels_by_intensity)
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inv_resp = np.arange(num_pixels_by_intensity.shape[0], dtype=np.float64)
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inv_resp[-1] = -1.0 # Use negative numbers to detect saturation
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def opt_irradiance():
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corrected_imgs = inv_resp[imgs] * exposures[:, np.newaxis, np.newaxis]
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times = np.ones_like(corrected_imgs) * (exposures**2)[:, np.newaxis, np.newaxis]
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times[corrected_imgs < 0] = 0
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corrected_imgs[corrected_imgs < 0] = 0
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denom = np.sum(times, axis=0)
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idx = (denom != 0)
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irr = np.sum(corrected_imgs, axis=0)
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irr[idx] /= denom[idx]
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irr[denom == 0] = -1.0
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return irr
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def opt_inv_resp():
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generated_imgs = irradiance[np.newaxis, :, :] * exposures[:, np.newaxis, np.newaxis]
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num_pixels_by_intensity = np.bincount(imgs.flat, generated_imgs.flat >= 0)
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generated_imgs[generated_imgs < 0] = 0
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sum_by_intensity = np.bincount(imgs.flat, generated_imgs.flat)
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new_inv_resp = inv_resp
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idx = np.nonzero(num_pixels_by_intensity > 0)
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new_inv_resp[idx] = sum_by_intensity[idx] / num_pixels_by_intensity[idx]
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new_inv_resp[-1] = -1.0 # Use negative numbers to detect saturation
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return new_inv_resp
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def print_error():
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generated_imgs = irradiance[np.newaxis, :, :] * exposures[:, np.newaxis, np.newaxis]
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generated_imgs -= inv_resp[imgs]
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generated_imgs[imgs == 255] = 0
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print(np.sum(generated_imgs**2))
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for iter in range(5):
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irradiance = opt_irradiance()
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print_error()
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inv_resp = opt_inv_resp()
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print_error()
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plt.figure()
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plt.plot(inv_resp[:-1])
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plt.ylabel('Irradiance Value')
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plt.xlabel('Image Intensity')
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plt.title('Inverse Responce Function')
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plt.figure()
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plt.imshow(irradiance)
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plt.title('Irradiance Image')
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plt.show()
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