I think you can adjust contrast here in two ways:
1) Histogram Equalization :
But when i tried this with your image, result was not as you expected. Check it below:
2) Thresholding :
Here, i compared each pixel value of input with an arbitrary value ( which i took
127). Below is the logic which has inbuilt function in opencv.
But remember, output is Binary image, not grayscale as you did.
If (input pixel value >= 127):
ouput pixel value = 255
output pixel value = 0
And below is the result i got :
For this, you can use Threshold function or compare function
3) If you are compulsory to get grayscale image as output, do as follows:
(code is in OpenCV-Python, but for every-function, corresponding C functions are available in opencv.itseez.com)
for each pixel in image:
if pixel value >= 127: add 'x' to pixel value.
else : subtract 'x' from pixel value.
( 'x' is an arbitrary value.) Thus difference between light and dark pixels increases.
img = cv2.imread('brain.jpg',0)
bigmask = cv2.compare(img,np.uint8(),cv2.CMP_GE)
smallmask = cv2.bitwise_not(bigmask)
x = np.uint8()
big = cv2.add(img,x,mask = bigmask)
small = cv2.subtract(img,x,mask = smallmask)
res = cv2.add(big,small)
And below is the result obtained: