import scipy.ndimage as ndi
img = ((1 - ndi.imread('1iDxQ_vaultah.png', mode='F')) >= 0.5).astype(float) # thresholded float image
label,num_features = ndi.label(img)
for feat in range(1,num_features + 1):
inds = np.where(label == feat)
if 0 in inds[0] or img.shape[0]-1 in inds[0] or 0 in inds[1] or img.shape[1]-1 in inds[1]:
img[inds] = 0