Language aims to have
effective handwritten recognition which purpose is writer involvement on
written documents concerned with the Non-Latin language in Bangla. In
the Non-Latin language, Bangla claims the necessity of Auto-Learned
Features with a sufficient manner supported by Human Constructed
Features. According to this problem assertion of handwritten documents,
security is sought for the proposal of document identification. In a
sense, the Bangla language has a large vocabulary where it renders so
many complex words including compound characters. On account of the
Bangl.a language, usable boundaries are large because of the volume of
manpower. Therefore, handwritten documents arise a great number a couple
of times. Addressing those features of the problem proposed a model
with CNN where it outperformed the handwritten documents in Bangla that
mixed with different writers wrote the same documents in a different
way. Moreover, the SVM comparison strongly stated that CNN is an
effective approach on account of 70% training and 30% testing validation
concern with 83%.