This paper proposes a gesture recognition approach in which morphological and trajectories are analysed. A video input containing the gesture demonstration is given to the algorithm as an input and the analysis are carried out frame by frame in 3 stages. During the Primary processing stage, the location and shape of the face and hands are identified. Secondary processing is concerned with extracting information on the change in these parameters throughout the video sample. At the decision-making stage, a two-step algorithm is used based on comparison of the motion trajectories and key object shapes between the test gesture and the reference gestures. The experiments were performed on a set of selected classes from UOM-SL2020 sign language data set and a high recognition F1-score of 0.8 was achieved.