Detección de manos en imágenes de profundidad mediante el uso de bosques de decisión aleatorios
Abstract
In the present work a system for hand detection in depth images is proposed. To perform
this task, the scene is segmented into 5 different classes: head, arms, body, hands and
background, using the pixel-wise classification of random decision forests.
Once the scene is segmented, the connected components algorithm is applied in order
to group sets of pixels of the same class into regions. From these regions, a list of hand
candidates is generated by validating the obtained components.
Using Dijkstra’s algorithm, the points at a geodesic distance of up to 50 cm from the
center of the hand candidate are found, along the found route, a histogram of classes is
generated and used as a descriptor for the final classification, which is performed with
support vector machine.
With this proposal, a recognition rate of 83,05 % is reached over a data base of 80000
synthetic images
Description
Proyecto de Graduación (Maestría en Electrónica) Instituto Tecnológico de Costa Rica, Escuela de Ingeniería Electrónica, 2015.