Title
CaloriNet: From silhouettes to calorie estimation in private environments.
Abstract
We propose a novel deep fusion architecture, CaloriNet, for the online estimation of energy expenditure for free living monitoring in private environments, where RGB data is discarded and replaced by silhouettes. Our fused convolutional neural network architecture is trainable end-to-end, to estimate calorie expenditure, using temporal foreground silhouettes alongside accelerometer data. The network is trained and cross-validated on a publicly available dataset, SPHERE_RGBD + Inertial_calorie. Results show state-of-the-art minimum error on the estimation of energy expenditure (calories per minute), outperforming alternative, standard and single-modal techniques.
Year
Venue
DocType
2018
BMVC
Conference
Volume
Citations 
PageRank 
abs/1806.08152
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Alessandro Masullo131.76
Tilo Burghardt2559.22
Dima Damen322531.54
Sion L. Hannuna46910.37
Víctor Ponce-López51327.10
Majid Mirmehdi695596.94