A User Interaction Bug Analyzer Based on Image
Data(s) |
01/08/2016
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Resumo |
Context: Mobile applications support a set of user-interaction features that are independent of the application logic. Rotating the device, scrolling, or zooming are examples of such features. Some bugs in mobile applications can be attributed to user-interaction features. Objective: This paper proposes and evaluates a bug analyzer based on user-interaction features that uses digital image processing to find bugs. Method: Our bug analyzer detects bugs by comparing the similarity between images taken before and after a user-interaction. SURF, an interest point detector and descriptor, is used to compare the images. To evaluate the bug analyzer, we conducted a case study with 15 randomly selected mobile applications. First, we identified user-interaction bugs by manually testing the applications. Images were captured before and after applying each user-interaction feature. Then, image pairs were processed with SURF to obtain interest points, from which a similarity percentage was computed, to finally decide whether there was a bug. Results: We performed a total of 49 user-interaction feature tests. When manually testing the applications, 17 bugs were found, whereas when using image processing, 15 bugs were detected. Conclusions: 8 out of 15 mobile applications tested had bugs associated to user-interaction features. Our bug analyzer based on image processing was able to detect 88% (15 out of 17) of the user-interaction bugs found with manual testing. |
Formato |
text/html |
Identificador |
http://www.scielo.edu.uy/scielo.php?script=sci_arttext&pid=S0717-50002016000200004 |
Idioma(s) |
en |
Publicador |
Centro Latinoamericano de Estudios en Informática |
Fonte |
CLEI Electronic Journal v.19 n.2 2016 |
Palavras-Chave | #bug analyzer #user-interaction features #image processing #interest points #testing |
Tipo |
journal article |