11 research outputs found
Online learning of taskdriven object-based visual attention control
A biologically-motivated computational model for learning task-driven and objectbased visual attention control in interactive environments is proposed. Our model consists of three layers. First, in the early visual processing layer, most salient location of a scene is derived using the biased saliency-based bottom-up model of visual attention. Then a cognitive component in the higher visual processing layer performs an application specific operation like object recognition at the focus of attention. From this information, a state is derived in the decision making and learning layer. Online Learning of Task-driven Object-based Visual Attention Control Ali Borji Top-down attention is learned by the U-TREE Discussions and Conclusions An agent working in an environment receives information momentarily through its visual sensor. It should determine what to look for. For this we use RL to teach the agent simply look for the most task relevant and rewarding entity in the visual scene ( This layer controls both top-down visual attention and motor actions. The learning approach is an extension of the U-TREE algorithm [6] to the visual domain. Attention tree is incrementally built in a quasi-static manner in two phases (iterations): 1) RL-fixed phase and 2) Tree-fixed phase In each Tree-fixed phase, RL algorithm is executed for some episodes by Fig. 1. Proposed model for learning task-driven object-based visual attention control Example scenario: captured scene through the agents' visual sensor undergoes a biased bottom-up saliency detection operation and focus of attention (FOA) is determined. Object at the FOA is recognized (i.e. is either present or not in the scene), then the agent moves in its binary tree in the decision making and leaves. 100% correct policy was achieved. The object at the attended location is recognized by the hierarchical model of object recognition (HMAX) [3] M. Riesenhuber, T. Poggio, Hierarchical models of object recognition in cortex. Nature Neuroscience, 2(1999),11, 1019-1025. Basic saliency-based model of visual attention [1] is revised for the purpose of salient region selection (object detection) at this layer where norm(.) is the Euclidean distance between two points in an image. Saliency is the function which takes as input an image and a weight vector and returns the most salient location. t i is the location of target object in the i-th image. In each Tree-fixed phase, RL algorithm is executed for some episodes by following ε-greedy action selection strategy. In this phase, tree is hold fixed and the derived quadruples (s t , a t , r t+1 , s t+1 ) are only used for updating the Q-table: State discretization occurs in the RL-fixed phase where gathered experiences are used to refine aliased states. An object which minimizes aliasing the most is selected for braking an aliased leaf. Acknowledgement This work was funded by the school of cognitive sciences, IPM, Tehran, IRAN. scene), then the agent moves in its binary tree in the decision making and learning layer. This is done repetitively until it reaches a leaf node which determines its state. The best motor action is this state is performed. Outcome of this action over the world is evaluated by a critic and a reinforcement signal is fed back to the agent to update its internal representations (attention tree) and action selection strategy in a quasi-static manner. Following subsections discuss each layer of the model in detail
Attention based object recognition applied to a humanoid robot
Analysis and recognition of objects in complex scenes is a demanding task for a computer. There is a selection mechanism, named visual attention, that optimizes the visual system, in which only the important parts of the scene are considered at a time. In this work, an object-based visual attention model with both bottom-up and top-down modulation is applied to the humanoid robot NAO to allow a new attention procedure to the robot. This means that the robot, by using its cameras, can recognize geometric figures even with the competition for the attention of all the objects in the image in real time. The proposed method is validated through some tests with 13 to 14 year old kids interacting with the robot NAO that provides some tips (such as the perimeter and area calculation formulas) and recognizes the figure showed by these children. The results are very promissor and show that the proposed approach can contribute for inserting robotics in the educacional context.São Paulo State Research Foundation (FAPESP)Brazilian National Research Council (CNPq
Incorporating a humanoid robot to motivate the geometric figures learning
Technology has been introduced into educational environments to facilitate learning and engage the students interest. Robotics can be an interesting alternative to explore theoretical concepts covered in class. In this paper, a computational system capable of detecting objects was incorporated into the robot NAO, so it can Interact with students, recognizing geometric shapes with overlap. The system consists of two models of neural networks and was evaluated through a sequence of didatic activities presented to students of the 5th year, aiming to encourage them to perform the tasks. The robot operates autonomously, recognizing and counting the diferente objects in the image. The results show that the children felt very motivated and engaged to fulfill the tasks.São Paulo State Research Foundation (FAPESP)Brazilian National Research Council (CNPq
Exploring to learn visual saliency: The RL-IAC approach
International audienceThe problem of object localization and recognition on autonomous mobile robots is still an active topic. In this context, we tackle the problem of learning a model of visual saliency directly on a robot. This model, learned and improved on-the-fly during the robot's exploration provides an efficient tool for localizing relevant objects within their environment. The proposed approach includes two intertwined components. On the one hand, we describe a method for learning and incrementally updating a model of visual saliency from a depth-based object detector. This model of saliency can also be exploited to produce bounding box proposals around objects of interest. On the other hand, we investigate an autonomous exploration technique to efficiently learn such a saliency model. The proposed exploration, called Reinforcement Learning-Intelligent Adaptive Curiosity (RL-IAC) is able to drive the robot's exploration so that samples selected by the robot are likely to improve the current model of saliency. We then demonstrate that such a saliency model learned directly on a robot outperforms several state-of-the-art saliency techniques, and that RL-IAC can drastically decrease the required time for learning a reliable saliency model
VISUAL SALIENCY ANALYSIS, PREDICTION, AND VISUALIZATION: A DEEP LEARNING PERSPECTIVE
In the recent years, a huge success has been accomplished in prediction of human eye fixations. Several studies employed deep learning to achieve high accuracy of prediction of human eye fixations. These studies rely on pre-trained deep learning for object classification. They exploit deep learning either as a transfer-learning problem, or the weights of the pre-trained network as the initialization to learn a saliency model. The utilization of such pre-trained neural networks is due to the relatively small datasets of human fixations available to train a deep learning model. Another relatively less prioritized problem is amount of computation of such deep learning models requires expensive hardware. In this dissertation, two approaches are proposed to tackle abovementioned problems. The first approach, codenamed DeepFeat, incorporates the deep features of convolutional neural networks pre-trained for object and scene classifications. This approach is the first approach that uses deep features without further learning. Performance of the DeepFeat model is extensively evaluated over a variety of datasets using a variety of implementations. The second approach is a deep learning saliency model, codenamed ClassNet. Two main differences separate the ClassNet from other deep learning saliency models. The ClassNet model is the only deep learning saliency model that learns its weights from scratch. In addition, the ClassNet saliency model treats prediction of human fixation as a classification problem, while other deep learning saliency models treat the human fixation prediction as a regression problem or as a classification of a regression problem
Biologically motivated keypoint detection for RGB-D data
With the emerging interest in active vision, computer vision researchers have been increasingly
concerned with the mechanisms of attention. Therefore, several visual attention
computational models inspired by the human visual system, have been developed, aiming at
the detection of regions of interest in images.
This thesis is focused on selective visual attention, which provides a mechanism for the
brain to focus computational resources on an object at a time, guided by low-level image properties
(Bottom-Up attention). The task of recognizing objects in different locations is achieved
by focusing on different locations, one at a time. Given the computational requirements of the
models proposed, the research in this area has been mainly of theoretical interest. More recently,
psychologists, neurobiologists and engineers have developed cooperation's and this has
resulted in considerable benefits. The first objective of this doctoral work is to bring together
concepts and ideas from these different research areas, providing a study of the biological research
on human visual system and a discussion of the interdisciplinary knowledge in this area, as
well as the state-of-art on computational models of visual attention (bottom-up). Normally, the
visual attention is referred by engineers as saliency: when people fix their look in a particular
region of the image, that's because that region is salient. In this research work, saliency methods
are presented based on their classification (biological plausible, computational or hybrid)
and in a chronological order.
A few salient structures can be used for applications like object registration, retrieval or
data simplification, being possible to consider these few salient structures as keypoints when
aiming at performing object recognition. Generally, object recognition algorithms use a large
number of descriptors extracted in a dense set of points, which comes along with very high computational
cost, preventing real-time processing. To avoid the problem of the computational
complexity required, the features have to be extracted from a small set of points, usually called
keypoints. The use of keypoint-based detectors allows the reduction of the processing time and
the redundancy in the data. Local descriptors extracted from images have been extensively
reported in the computer vision literature. Since there is a large set of keypoint detectors, this
suggests the need of a comparative evaluation between them. In this way, we propose to do a
description of 2D and 3D keypoint detectors, 3D descriptors and an evaluation of existing 3D keypoint
detectors in a public available point cloud library with 3D real objects. The invariance of
the 3D keypoint detectors was evaluated according to rotations, scale changes and translations.
This evaluation reports the robustness of a particular detector for changes of point-of-view and
the criteria used are the absolute and the relative repeatability rate. In our experiments, the
method that achieved better repeatability rate was the ISS3D method.
The analysis of the human visual system and saliency maps detectors with biological inspiration
led to the idea of making an extension for a keypoint detector based on the color
information in the retina. Such proposal produced a 2D keypoint detector inspired by the behavior
of the early visual system. Our method is a color extension of the BIMP keypoint detector,
where we include both color and intensity channels of an image: color information is included
in a biological plausible way and multi-scale image features are combined into a single keypoints
map. This detector is compared against state-of-art detectors and found particularly
well-suited for tasks such as category and object recognition. The recognition process is performed
by comparing the extracted 3D descriptors in the locations indicated by the keypoints after mapping the 2D keypoints locations to the 3D space. The evaluation allowed us to obtain
the best pair keypoint detector/descriptor on a RGB-D object dataset. Using our keypoint detector
and the SHOTCOLOR descriptor a good category recognition rate and object recognition
rate were obtained, and it is with the PFHRGB descriptor that we obtain the best results.
A 3D recognition system involves the choice of keypoint detector and descriptor. A new
method for the detection of 3D keypoints on point clouds is presented and a benchmarking is
performed between each pair of 3D keypoint detector and 3D descriptor to evaluate their performance
on object and category recognition. These evaluations are done in a public database
of real 3D objects. Our keypoint detector is inspired by the behavior and neural architecture
of the primate visual system: the 3D keypoints are extracted based on a bottom-up 3D saliency
map, which is a map that encodes the saliency of objects in the visual environment. The saliency
map is determined by computing conspicuity maps (a combination across different modalities)
of the orientation, intensity and color information, in a bottom-up and in a purely stimulusdriven
manner. These three conspicuity maps are fused into a 3D saliency map and, finally, the
focus of attention (or "keypoint location") is sequentially directed to the most salient points in
this map. Inhibiting this location automatically allows the system to attend to the next most
salient location. The main conclusions are: with a similar average number of keypoints, our 3D
keypoint detector outperforms the other eight 3D keypoint detectors evaluated by achiving the
best result in 32 of the evaluated metrics in the category and object recognition experiments,
when the second best detector only obtained the best result in 8 of these metrics. The unique
drawback is the computational time, since BIK-BUS is slower than the other detectors. Given
that differences are big in terms of recognition performance, size and time requirements, the
selection of the keypoint detector and descriptor has to be matched to the desired task and we
give some directions to facilitate this choice. After proposing the 3D keypoint detector, the research focused on a robust detection and
tracking method for 3D objects by using keypoint information in a particle filter. This method
consists of three distinct steps: Segmentation, Tracking Initialization and Tracking. The segmentation
is made to remove all the background information, reducing the number of points for
further processing. In the initialization, we use a keypoint detector with biological inspiration.
The information of the object that we want to follow is given by the extracted keypoints. The
particle filter does the tracking of the keypoints, so with that we can predict where the keypoints
will be in the next frame. In a recognition system, one of the problems is the computational cost
of keypoint detectors with this we intend to solve this problem. The experiments with PFBIKTracking
method are done indoors in an office/home environment, where personal robots are
expected to operate. The Tracking Error evaluates the stability of the general tracking method.
We also quantitatively evaluate this method using a "Tracking Error". Our evaluation is done by
the computation of the keypoint and particle centroid. Comparing our system that the tracking
method which exists in the Point Cloud Library, we archive better results, with a much smaller
number of points and computational time. Our method is faster and more robust to occlusion
when compared to the OpenniTracker.Com o interesse emergente na visão ativa, os investigadores de visão computacional têm
estado cada vez mais preocupados com os mecanismos de atenção. Por isso, uma série de
modelos computacionais de atenção visual, inspirado no sistema visual humano, têm sido desenvolvidos.
Esses modelos têm como objetivo detetar regiões de interesse nas imagens.
Esta tese está focada na atenção visual seletiva, que fornece um mecanismo para que
o cérebro concentre os recursos computacionais num objeto de cada vez, guiado pelas propriedades
de baixo nível da imagem (atenção Bottom-Up). A tarefa de reconhecimento de
objetos em diferentes locais é conseguida através da concentração em diferentes locais, um
de cada vez. Dados os requisitos computacionais dos modelos propostos, a investigação nesta
área tem sido principalmente de interesse teórico. Mais recentemente, psicólogos, neurobiólogos
e engenheiros desenvolveram cooperações e isso resultou em benefícios consideráveis. No
início deste trabalho, o objetivo é reunir os conceitos e ideias a partir dessas diferentes áreas
de investigação. Desta forma, é fornecido o estudo sobre a investigação da biologia do sistema
visual humano e uma discussão sobre o conhecimento interdisciplinar da matéria, bem como
um estado de arte dos modelos computacionais de atenção visual (bottom-up). Normalmente,
a atenção visual é denominada pelos engenheiros como saliência, se as pessoas fixam o olhar
numa determinada região da imagem é porque esta região é saliente. Neste trabalho de investigação,
os métodos saliência são apresentados em função da sua classificação (biologicamente
plausível, computacional ou híbrido) e numa ordem cronológica.
Algumas estruturas salientes podem ser usadas, em vez do objeto todo, em aplicações
tais como registo de objetos, recuperação ou simplificação de dados. É possível considerar
estas poucas estruturas salientes como pontos-chave, com o objetivo de executar o reconhecimento
de objetos. De um modo geral, os algoritmos de reconhecimento de objetos utilizam um
grande número de descritores extraídos num denso conjunto de pontos. Com isso, estes têm um
custo computacional muito elevado, impedindo que o processamento seja realizado em tempo
real. A fim de evitar o problema da complexidade computacional requerido, as características
devem ser extraídas a partir de um pequeno conjunto de pontos, geralmente chamados pontoschave.
O uso de detetores de pontos-chave permite a redução do tempo de processamento e a
quantidade de redundância dos dados. Os descritores locais extraídos a partir das imagens têm
sido amplamente reportados na literatura de visão por computador. Uma vez que existe um
grande conjunto de detetores de pontos-chave, sugere a necessidade de uma avaliação comparativa
entre eles. Desta forma, propomos a fazer uma descrição dos detetores de pontos-chave
2D e 3D, dos descritores 3D e uma avaliação dos detetores de pontos-chave 3D existentes numa
biblioteca de pública disponível e com objetos 3D reais. A invariância dos detetores de pontoschave
3D foi avaliada de acordo com variações nas rotações, mudanças de escala e translações.
Essa avaliação retrata a robustez de um determinado detetor no que diz respeito às mudanças
de ponto-de-vista e os critérios utilizados são as taxas de repetibilidade absoluta e relativa. Nas
experiências realizadas, o método que apresentou melhor taxa de repetibilidade foi o método
ISS3D.
Com a análise do sistema visual humano e dos detetores de mapas de saliência com inspiração
biológica, surgiu a ideia de se fazer uma extensão para um detetor de ponto-chave
com base na informação de cor na retina. A proposta produziu um detetor de ponto-chave 2D
inspirado pelo comportamento do sistema visual. O nosso método é uma extensão com base na cor do detetor de ponto-chave BIMP, onde se incluem os canais de cor e de intensidade de
uma imagem. A informação de cor é incluída de forma biológica plausível e as características
multi-escala da imagem são combinadas num único mapas de pontos-chave. Este detetor
é comparado com os detetores de estado-da-arte e é particularmente adequado para tarefas
como o reconhecimento de categorias e de objetos. O processo de reconhecimento é realizado
comparando os descritores 3D extraídos nos locais indicados pelos pontos-chave. Para isso, as
localizações do pontos-chave 2D têm de ser convertido para o espaço 3D. Isto foi possível porque
o conjunto de dados usado contém a localização de cada ponto de no espaço 2D e 3D. A avaliação
permitiu-nos obter o melhor par detetor de ponto-chave/descritor num RGB-D object dataset.
Usando o nosso detetor de ponto-chave e o descritor SHOTCOLOR, obtemos uma noa taxa de
reconhecimento de categorias e para o reconhecimento de objetos é com o descritor PFHRGB
que obtemos os melhores resultados.
Um sistema de reconhecimento 3D envolve a escolha de detetor de ponto-chave e descritor,
por isso é apresentado um novo método para a deteção de pontos-chave em nuvens de
pontos 3D e uma análise comparativa é realizada entre cada par de detetor de ponto-chave
3D e descritor 3D para avaliar o desempenho no reconhecimento de categorias e de objetos.
Estas avaliações são feitas numa base de dados pública de objetos 3D reais. O nosso detetor
de ponto-chave é inspirado no comportamento e na arquitetura neural do sistema visual dos
primatas. Os pontos-chave 3D são extraídas com base num mapa de saliências 3D bottom-up,
ou seja, um mapa que codifica a saliência dos objetos no ambiente visual. O mapa de saliência
é determinada pelo cálculo dos mapas de conspicuidade (uma combinação entre diferentes
modalidades) da orientação, intensidade e informações de cor de forma bottom-up e puramente
orientada para o estímulo. Estes três mapas de conspicuidade são fundidos num mapa de saliência
3D e, finalmente, o foco de atenção (ou "localização do ponto-chave") está sequencialmente
direcionado para os pontos mais salientes deste mapa. Inibir este local permite que o sistema
automaticamente orientado para próximo local mais saliente. As principais conclusões são: com
um número médio similar de pontos-chave, o nosso detetor de ponto-chave 3D supera os outros
oito detetores de pontos-chave 3D avaliados, obtendo o melhor resultado em 32 das métricas
avaliadas nas experiências do reconhecimento das categorias e dos objetos, quando o segundo
melhor detetor obteve apenas o melhor resultado em 8 dessas métricas. A única desvantagem
é o tempo computacional, uma vez que BIK-BUS é mais lento do que os outros detetores. Dado
que existem grandes diferenças em termos de desempenho no reconhecimento, de tamanho
e de tempo, a seleção do detetor de ponto-chave e descritor tem de ser interligada com a
tarefa desejada e nós damos algumas orientações para facilitar esta escolha neste trabalho de
investigação.
Depois de propor um detetor de ponto-chave 3D, a investigação incidiu sobre um método
robusto de deteção e tracking de objetos 3D usando as informações dos pontos-chave num filtro
de partículas. Este método consiste em três etapas distintas: Segmentação, Inicialização do
Tracking e Tracking. A segmentação é feita de modo a remover toda a informação de fundo,
a fim de reduzir o número de pontos para processamento futuro. Na inicialização, usamos um
detetor de ponto-chave com inspiração biológica. A informação do objeto que queremos seguir
é dada pelos pontos-chave extraídos. O filtro de partículas faz o acompanhamento dos pontoschave,
de modo a se poder prever onde os pontos-chave estarão no próximo frame. As experiências
com método PFBIK-Tracking são feitas no interior, num ambiente de escritório/casa, onde
se espera que robôs pessoais possam operar. Também avaliado quantitativamente este método
utilizando um "Tracking Error". A avaliação passa pelo cálculo das centróides dos pontos-chave e
das partículas. Comparando o nosso sistema com o método de tracking que existe na biblioteca usada no desenvolvimento, nós obtemos melhores resultados, com um número muito menor de
pontos e custo computacional. O nosso método é mais rápido e mais robusto em termos de
oclusão, quando comparado com o OpenniTracker