3. Modified hybrid median filter. The entire document should be in Times New Roman or Times font. Type 3 fonts must not be used. This proposed channel is the adjusted rendition of the hybrid median filter clarified previously. It deals with the sub windows like half hybrid median filter . The maximum estimation of the 450 neighbors shaping a "X" and the middle estimation of the 900 neighbors framing a "+" are contrasted and the focal pixel and the middle estimation of that set is then spared as the new pixel esteem. Modified hybrid segmented filter used to remove the noise from the image and image quality is improved. Followings are the steps: Load the MRI image: In the first step of implementation. Load the original MRI image from the database that is the original image from which the tumor has to be detected using Matlab. 5. Implementation. The table 1 shows the result of the implementation of algorithmic solution and non-algorithmic results, as shown in the table, without neural network the accuracy is 6.9% but with neural network which had applied on dataset which is also available on physic.net is 7.7% more accurate, with the help of filtration result will be more elaborated which help doctors to find exact tumour which give 4% of accuracy This is done with the help of clinical data, mapped the values with clinical values and find out the accuracy rate. with the reference of Filters the result would be better and become better with the passage of time and it never requires that much significant value to check the disparity of results from previous and it will improve more. 6. Conclusion. MRI images is the best solution to fine the brain tumor. In this proposed system brain images to be a significant way to detect the brain tumor. Brain tumor is detected by using median filter and and segmentation method with the help of some morphological operators. The mortality rate of brain cancer is the most elevated among every single other kind of tumor; it can be recognized ahead of schedule by distinguishing the brain nodules. In this paper, picture pre-processing and image segmentation are executed to acquire the finding result. By utilizing these means, the nodules are identified and a few highlights are removed. The result of implementation has been show in the table a given below.