Abstract:
Accurate assessment of nutrition information is an important part in the
prevention and treatment of a multitude of diseases, but remains a
challenging task. We present a novel mobile augmented reality application,
which assists users in the nutrition assessment of their meals. Using the
realtime camera image as a guide, the user overlays a 3D form of the food.
Additionally the user selects the food type. The corresponding nutrition
information is automatically computed. Thus accurate volume estimation is
required for accurate nutrition information assessment. This work presents an
evaluation of our mobile augmented reality approaches for portion estimation
and offers a comparison to conventional portion estimation approaches. The
comparison is performed on the basis of a user study (n=28). The quality of
nutrition assessment is measured based on the error in energy units. In the
results of the evaluation one of our mobile augmented reality approaches
significantly outperforms all other methods. Additionally we present results
on the efficiency and effectiveness of the approaches.