Commit 0518518b authored by Nathaniel Callens's avatar Nathaniel Callens

merge

parents a88ba837 5bd67af5
......@@ -107,13 +107,40 @@ def plot_hist(tiff_list):
diff = np.empty((row,col))
diff[0,:] = np.zeros(col) # keep the first row from the image
diff[:,0] = np.zeros(row)
predict = np.empty([row,col]) # create a empty matrix to update prediction
predict[0,:] = image[0,:] # keep the first row from the image
predict[:,0] = image[:,0] # keep the first columen from the image
predict[-1,:] = image[-1,:] # keep the first row from the image
predict[:,-1] = image[:,-1] # keep the first columen from the image
diff = np.empty([row,col])
diff[0,:] = np.zeros(col) # keep the first row from the image
diff[:,0] = np.zeros(row)
diff[-1,:] = np.zeros(col) # keep the first row from the image
diff[:,-1] = np.zeros(row)
for r in range(1,row-1): # loop through the rth row
for c in range(1,col-1): # loop through the cth column
surrounding = np.array([predict[r-1,c-1], predict[r-1,c], predict[r-1,c+1], predict[r,c-1]])
predict[r,c] = np.mean(surrounding) # take the mean of the previous 4 pixels
diff[r,c] = (np.max(surrounding)-np.min(surrounding))
predict = np.ravel(predict)
diff = np.ravel(diff)
n = len(predict)
fig = plt.figure()
ax1 = fig.add_subplot(111, projection='3d')
z3 = np.zeros(n)
dx = np.ones(n)
dy = np.ones(n)
dz = np.arange(n)
ax1.bar3d(predict, diff, z3, dx, dy, dz, color="red")
ax1.axis('off')
plt.show()
return image, predict, diff
if __name__ == '__main__':
"""For boundary cases: Start by grabbing the shape of the images and saving those
......@@ -127,6 +154,7 @@ if __name__ == '__main__':
image, predict, difference = plot_hist(images)
error = np.abs(image-predict)
plot_hist(images)
\ No newline at end of file
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