# swipe input keyboard for indian languages. given a gesture made on the keybard,language chosen-> keyboard layout predict the word that matches closest. ## Input gesture data -> polygon(shape,size,corners, path), (time, pauses)?, spatial data with word character correlation. weighted-vocabulary,corpus for the language,history of gesture-word mappings/corrections for the user. language, keyboard layout ## Output Predict the word ## Model Structured Output/HMM/ CNN? # mnist hand-written digit database -> build application for recognizing full phone numbers(10 digit). ## Input mnist digit database, generated 10 digit images with random positioning,orientation,scale of individual digit images sampled randomly from the mnist database. ## Output predict the phone number ## Model regression model to identify the points where the split for the images has to be made and pass the split images to mnist digit recognizer to identify the digit.