TY - JOUR AU - Rathod, Sharmila AU - Rathod, Nilesh AU - Marathe, Nilesh AU - Gawade, Aruna AU - Kundale, Jyoti AU - Kulkarni, Nikita PY - 2024 TI - Efficient Detection of Palm and Hand Landmark for Speech Impaired People Using Mediapipe Model JF - Journal of Computer Science VL - 20 IS - 9 DO - 10.3844/jcssp.2024.997.1008 UR - https://thescipub.com/abstract/jcssp.2024.997.1008 AB - Human-machine interaction may be a basic figure in this age of touch-screen gadgets. Numerous gadgets are being created that can be worked without touching the system. So, in this consideration, how to function the framework utilizing signals instead of touching it appears. The point of this study is to create different communication procedures between humans and individual computers that would be required for individuals with engine impedances to take part in the data society. The paper elaborates a framework that will incorporate a hand signal acknowledgment approach for ASL dialect-sign dialect could be a strategy utilized by hard-of-hearing individuals for communication. This study may be, to begin with, a step towards building a conceivable sign dialect interpreter, to communicate in sign dialect and decipher it into composed verbal dialect. This is considered accomplished a useful hand signal acknowledgment framework for ASL communication, utilizing neural systems on webcam-captured pictures. This approach offers the potential for real-time ASL interpretation on common gadgets. The effect is significant, tending to communication challenges and cultivating deaf people