BFO Based Active Contour for Tumor Segmentation

As the image processing filed grows day by day researcher’s moves towards bio medical filed to emerge new fields to make detection of various medical diagnosis using automated image processing algorithms. One of the fields from this is tumor segmentation also know as tumor detection using image processing algorithms. Till yes many researchers come up with various algorithms to detect tumor automatically form xrays and ct scans. Here we are going to propose a new method to detect tumor using bacteria forging optimization (BFO) to optimize our area of detection. The experimental results of BFO optimization automatically detect the Brain tumor with high efficiency and accuracy. Keywords— — GT(ground truth),Multi -thresholding , fitness value.

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