J. Vis. Lang. Comput. | 2021

A Case Study of Testing an Image Recognition

 
 
 
 

Abstract


High-quality Artificial intelligence (AI) software in different domains, like image recognition, has been widely emerged in people’s daily life. They are built on machine learning models to implement intelligent features. However, the current research on image recognition software rarely discusses test questions, clear quality requirements, and evaluation methods. The quality of image recognition applications becomes more and more prominent. A three-dimensional(3D) classification decision table can help users to conduct classification-based test requirement analysis and modeling for any given mobile apps powered with AI functions in detection, classification, and prediction. This paper presents a case study of a realistic image recognition application called Calorie Mama using manual testing and automation testing with a 3D decision table. The study results indicate the proposed method is feasible and effective in quality evaluation.

Volume 2021
Pages 11-20
DOI 10.18293/seke2021-194
Language English
Journal J. Vis. Lang. Comput.

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