I'm doing some image processing, applying some filters, such as the sobel operator, to find edges. So, after applying the operator, I do this:
def classify_edges(magnitude, threshold=.75): """ Classifies a pixel as edge or not based on its magnitude, which is generated after the appliance of an operator :param magnitude : the gradient magnitude of the pixel :return : the pixel classification """ classification = Dt.Data() e = 0 n = 0 for x, y in product(range(classification.rows), range(classification.cols)): # Not edge if magnitude[x][y] > threshold: classification.data[x][y] = 1.0 n += 1 # Edge else: classification.data[x][y] = 0.0 e += 1 print e, n return classification
I was assigning a value (b or w) for a pixel according to its magnitude, to get edges. So, I was following the pattern 1 = True, for is_edge, and 0 = False, for not_edge, and expecting to get an image with white edges and black background. But I noticed that I was getting the opposite, 0 for white and 1 for black. I verified this printing the values. Since I have less edges than background, my number of edges is smaller than my number of background. I for e >> n, and, as can be seen in the image below, my edges are in white color and my background in black.
This is my plot method:
def generate_data_black_and_white_heat_map(data, x_axis_label, y_axis_label, plot_title, file_path, box_plot=False): """ Generate a heat map of the data :param data : the data to be saved :param x_axis_label : the x axis label of the data :param y_axis_label : the y axis label of the data :param plot_title : the title of the data :param file_path : the name of the file """ plt.figure() plt.title(plot_title) plt.imshow(data.data, extent=[0, data.cols, data.rows, 0], cmap='binary') plt.xlabel(x_axis_label) plt.ylabel(y_axis_label) plt.savefig(file_path + '.png') plt.close()
I'm wondering if black is 1 and white 0 for matplotlib or if I'm doing something wrong. I guess this is due my cmpa = 'binary'. There is something documentation about how this conversion is done?
Thank you in advance.