Indian Sign Language (ISL) interpretation is the major research work going on to aid Indian deaf and
dumb people. Considering the limitation of glove/sensor based approach, vision based approach was
considered for ISL interpretation system. Among different human modalities, hand is the primarily used
modality to any sign language interpretation system so, hand gesture was used for recognition of manual
alphabets and numbers. ISL consists of manual alphabets, numbers as well as large set of vocabulary with
grammar. In this paper, methodology for recognition of static ISL manual alphabets, number and static
symbols is given. ISL alphabet consists of single handed and two handed sign. Fourier descriptor as a
feature extraction method was chosen due the property of invariant to rotation, scale and translation. True
positive rate was achieved 94.15% using nearest neighbourhood classifier with Euclidean distance where
sample data were considered with different illumination changes,