27 research outputs found

    Synthesizing Normalized Faces from Facial Identity Features

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    We present a method for synthesizing a frontal, neutral-expression image of a person's face given an input face photograph. This is achieved by learning to generate facial landmarks and textures from features extracted from a facial-recognition network. Unlike previous approaches, our encoding feature vector is largely invariant to lighting, pose, and facial expression. Exploiting this invariance, we train our decoder network using only frontal, neutral-expression photographs. Since these photographs are well aligned, we can decompose them into a sparse set of landmark points and aligned texture maps. The decoder then predicts landmarks and textures independently and combines them using a differentiable image warping operation. The resulting images can be used for a number of applications, such as analyzing facial attributes, exposure and white balance adjustment, or creating a 3-D avatar

    Modelos de aprendizaje autom谩tico en la detecci贸n e identificaci贸n de personas: una revisi贸n de literatura

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    Introduction: This article is the result of research entitled "Development of a prototype to optimize access conditions to the SENA-Pescadero using artificial intelligence and open-source tools", developed at the Servicio Nacional de Aprendizaje in 2020. 聽 Problem: How to identify Machine Learning Techniques applied to computer vision processes through a literature review? Objective: Determine the application, as well as advantages and disadvantages of machine learning techniques focused on the detection and identification of people. Methodology: Systematic literature review in 4 high-impact bibliographic and scientific databases, using search filters and information selection criteria. Results: Machine Learning techniques defined as Principal Component Analysis, Weak Label Regularized Local Coordinate Coding, Support Vector Machines, Haar Cascade Classifiers and EigenFaces and FisherFaces, as well as their applicability in detection and identification processes. 聽 Conclusion: The research led to the identification of the main computational intelligence techniques based on machine learning, applied to the detection and identification of people. Their influence was shown in several application cases, but most of them were focused on the implementation and optimization of access control systems, or tasks in which the identification of people was required for the execution of processes. Originality: Through this research, we studied and defined the main machine learning techniques currently used for the detection and identification of people. Limitations: The systematic review is limited to information available in the 4 databases consulted, and the amount of information is variable as articles are deposited in the databases.Introducci贸n: Este art铆culo es el resultado de la investigaci贸n titulada " Desarrollo de un prototipo para optimizar las condiciones de acceso al SENA-Pescadero utilizando inteligencia artificial y herramientas de c贸digo abierto", desarrollada en el Servicio Nacional de Aprendizaje en 2020. Problema: 驴C贸mo identificar las t茅cnicas de aprendizaje autom谩tico aplicadas a los procesos de visi贸n por computador a trav茅s de una revisi贸n bibliogr谩fica? Objetivo: Determinar la aplicaci贸n, as铆 como las ventajas y desventajas de las t茅cnicas de aprendizaje autom谩tico enfocadas a la detecci贸n e identificaci贸n de personas. Metodolog铆a: Revisi贸n sistem谩tica de la literatura en 4 bases de datos bibliogr谩ficas y cient铆ficas de alto impacto, utilizando filtros de b煤squeda y criterios de selecci贸n de informaci贸n. Resultados: T茅cnicas de aprendizaje autom谩tico definidas como An谩lisis de Componentes Principales, Codificaci贸n Local de Coordenadas Regularizada de Etiquetas D茅biles, M谩quinas de Vectores de Soporte, Clasificadores en Cascada de Haar y EigenFaces y FisherFaces, as铆 como su aplicabilidad en procesos de detecci贸n e identificaci贸n. Conclusiones: La investigaci贸n permiti贸 identificar las principales t茅cnicas de inteligencia computacional basadas en machine learning aplicadas a la detecci贸n e identificaci贸n de personas. Su influencia se mostr贸 en varios casos de aplicaci贸n, pero la mayor铆a de ellos se centraron en la implementaci贸n y optimizaci贸n de sistemas de control de acceso, o tareas en las que se requer铆a la identificaci贸n de personas para la ejecuci贸n de procesos Originalidad: A trav茅s de esta investigaci贸n se estudiaron y definieron las principales t茅cnicas de machine learning utilizadas actualmente para la detecci贸n e identificaci贸n de personas

    Groupwise non-rigid registration for automatic construction of appearance models of the human craniofacial complex for analysis, synthesis and simulation

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    Finally, a novel application of 3D appearance modelling is proposed: a faster than real-time algorithm for statistically constrained quasi-mechanical simulation. Experiments demonstrate superior realism, achieved in the proposed method by employing statistical appearance models to drive the simulation, in comparison with the comparable state-of-the-art quasi-mechanical approaches.EThOS - Electronic Theses Online ServiceGBUnited Kingdo

    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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    18th SC@RUG 2020 proceedings 2020-2021

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