SciELO - Scientific Electronic Library Online

 
vol.19 número2Understanding Notional Machines through Traditional Teaching with Conceptual Contraposition and Program Memory TracingAutomatic Glaucoma Detection Based on Optic Disc Segmentation and Texture Feature Extraction índice de autoresíndice de materiabúsqueda de artículos
Home Pagelista alfabética de revistas  

Servicios Personalizados

Revista

Articulo

Links relacionados

Compartir


CLEI Electronic Journal

versión On-line ISSN 0717-5000

Resumen

MENDEZ-PORRAS, Abel; ALFARO-VELASCO, Jorge; JENKINS, Marcelo  y  MARTINEZ PORRAS, Alexandra. A User Interaction Bug Analyzer Based on Image. CLEIej [online]. 2016, vol.19, n.2, pp.4-4. ISSN 0717-5000.

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.

Palabras clave : bug analyzer; user-interaction features; image processing; interest points; testing.

        · resumen en Español     · texto en Inglés     · Inglés ( pdf )

 

Creative Commons License Todo el contenido de esta revista, excepto dónde está identificado, está bajo una Licencia Creative Commons