A Hybrid System for Automatic Infant Cry Recognition I

Autor: Carlos Alberto Reyes-García, Ramon Zatarain, Lucia Barron, Orion Fausto Reyes-Galaviz
Rok vydání: 2009
DOI: 10.4018/978-1-59904-849-9.ch127
Popis: Crying in babies is a primary communication function, governed directly by the brain; any alteration on the normal functioning of the babies’ body is reflected in the cry (Wasz-Höckert, et al, 1968). Based on the information contained in the cry’s wave, the infant’s physical state can be determined; and even pathologies in very early stages of life detected (Wasz-Höckert, et al, 1970). To perform this detection, a Fuzzy Relational Neural Network (FRNN) is applied. The input features are represented by fuzzy membership functions and the links between nodes, instead of weights, are represented by fuzzy relations (Reyes, 1994). This paper, as the first of a two parts document, describes the Infant Cry Recognition System´s architecture as well as the FRNN model. Implementation and testing are reported in the complementary paper.
Databáze: OpenAIRE