A Practical Black-Box Attack Against Autonomous Speech Recognition Model

Author(s):  
Wenshu Fan ◽  
Hongwei Li ◽  
Wenbo Jiang ◽  
Guowen Xu ◽  
Rongxing Lu

The aim of the project is to develop a wheel chair which can be controlled by voice of the person. It is based on the speech recognition model. The project is focused on controlling the wheel chair by human voice. The system is intended to control a wheel seat by utilizing the voice of individual. The structure of this framework will be particularly valuable to the crippled individual and furthermore to the older individuals. It is a booming technology which interfaces human with machine. Smart phone device is the interface. This will allow the challenging people to move freely without the assistant of others. They will get a moral support to live independently .The hardware used are Arduino kit, Microcontroller, Wheelchair and DC motors. DC motor helps for the movement of wheel chair. Ultra Sonic Sensor senses the obstacles between wheelchair and its way.


Author(s):  
Ramy Mounir ◽  
Redwan Alqasemi ◽  
Rajiv Dubey

This work focuses on the research related to enabling individuals with speech impairment to use speech-to-text software to recognize and dictate their speech. Automatic Speech Recognition (ASR) tends to be a challenging problem for researchers because of the wide range of speech variability. Some of the variabilities include different accents, pronunciations, speeds, volumes, etc. It is very difficult to train an end-to-end speech recognition model on data with speech impediment due to the lack of large enough datasets, and the difficulty of generalizing a speech disorder pattern on all users with speech impediments. This work highlights the different techniques used in deep learning to achieve ASR and how it can be modified to recognize and dictate speech from individuals with speech impediments.


Author(s):  
Hadi Abdullah ◽  
Muhammad Sajidur Rahman ◽  
Washington Garcia ◽  
Kevin Warren ◽  
Anurag Swarnim Yadav ◽  
...  

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