An Automated Testing Framework for Gesture Recognition System using Dynamic Image Pattern Generation with Augmentation

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Md. Ashaduzzaman
Sheikh Monirul Hasan
Md. Saiful Islam
Muhammad Aminur Rahaman

Abstract

In  the  field of information technology,  the  gesture recognition system plays a very essential role. As it has achieved vast  importance, it is mandatory to test  the  recognition  system to  ensure  the  quality  of the  system  by  identifying  the  bugs  in the  software.  In  our  research, we suggested  a  dynamic  testing method  for  gesture  recognition software.  using  dynamic  image pattern generation  with augmentation. The automated software testing  framework is a set of processes  to create  new test cases for  properly testing  a image  processing  software.  The  research intention   for  generate   automated testing  cases  by  following  a standard process  which  helps  to increase  the  performance and efficiency of the  gesture  recognition system.  We have  built  the framework  to  give  proper  testing   and   give  result  (accuracy and  defect) for which gesture  recognition system already  in the market. our research, the team strongly following and adding two software  testing  standard. First  one  is  ISO/IEC/IEEE/291129- 3  to  define  the  process  for  testing  software.   And  the  second one is ISO/IEC/IEEE/291129-5 to implement  the techniques  for software  testing.  We proposed  this  framework with  major  five parameters by noise, rotation, background, contrast, and  scale. Which  are  the  most  use with  every  gesture  recognition system. Our developed framework’s phase is used to generate  new testing cases  based  on  the  existing  gesture  recognition  system’s  data. There  are we work with five systems, commonly with the gesture recognition for experiments. We provide  the testing  report with total   accuracy   and   defect  by  comparing   existing  well-known system’s  data.   At  the  final  result,  our   system  suggested   an analysis  report based  on  the  testing  result. And  tell  what  are the improvement needs for the existing system to consider noised images or different  scaled images to build  a robust system.

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