I'm doing data analysis (e.g. using Local Binary Pattern) on Python and I'm trying to optimize my code. In my code I'm using binary vectors which are implemented currently as
numpu ndarray vectors. Here are three functions from my code:
# Will return a binary vector presentation of the neighbourhood # # INPUTS: # 'ndata' numpy ndarray consisting of the neighbourhood X- and Y- coordinates and values # 'thres' decimal value indicating the value of the center pixel # # OUTPUT: # 'bvec' binary vector presentation of the neighbourhood def toBinvec(ndata, thres): bvec = np.zeros((len(ndata), 1)) for i in range(0, len(ndata)): if ndata[i, 2]-thres < 0: bvec[i] = 0 else: bvec[i] = 1 return bvec # Will check whether a given binary vector is uniform or not # A binary pattern is uniform if when rotated one step, the number of # bit values changing is <= 2 # # INPUTS: # 'binvec' is a binary vector of type numpy ndarray # # OUTPUT: # 'True/False' boolean indicating uniformness def isUniform(binvec): temp = rotateDown(binvec) # This will rotate the binary vector one step down devi = 0 for i in range(0, len(temp)): if temp[i] != binvec[i]: devi += 1 if devi > 2: return False else: return True # Will return the corresponding decimal number of binary vector # # INPUTS: # 'binvec' is a binary vector of type numpy ndarray # # OUTPUT: # 'value' The evaluated decimal value of the binary vector def evaluate(binvec): value = 0 for i in range(0, len(binvec)): value += binvec[i]*(2**i) return value
Is there some other way I should implement my binary vectors in order to make the code more efficient? The code is to be used with Big Data analysis, so efficiency is an important matter.
I also need to do some manipulation to the binary vectors, e.g. rotating it, evaluating its decimal value etc.
Thank you for any help / hints! =)