653 research outputs found
Do Elections Always Motivate Incumbents?.
This paper studies a principal-agent model of the relationship between office-holders and the electorate, where the office-holder is initially uninformed about herability (following Holmström, 1999). If office-holder effort and ability interact in the "production function" that determines performance in office, then an office-holder has an incentive to experiment, i.e. raise effort so that performance becomes a more accurate signal of her ability.ELECTIONS ; BUSINESS CYCLES ; PRODUCTION
Ridgelet-based signature for natural image classification
This paper presents an approach to grouping natural scenes into (semantically) meaningful categories. The proposed approach exploits the statistics of natural scenes to define
relevant image categories. A ridgelet-based signature is used to represent images. This signature is used by a support vector classifier that is well designed to support high dimensional features, resulting in an effective recognition system. As an illustration of the potential of the approach several experiments of binary classifications (e.g. city/landscape or indoor/outdoor) are conducted on databases of natural scenes
Image metadata estimation using independent component analysis and regression
In this paper, we describe an approach to camera metadata estimation using regression based on Independent Component Analysis (ICA). Semantic scene classification of images using camera metadata related to capture conditions has had some success in the past. However, different makes and models of camera capture different types of metadata and this severely hampers the application of this kind of approach in real systems that consist of photos captured by many different users. We propose to address this issue by using regression to predict the missing metadata from observed data, thereby providing more complete (and hence more useful) metadata for the entire image corpus. The proposed approach uses an ICA based approach to regression
Biophysicochemical interaction of a clinical pulmonary surfactant with nano-alumina
We report on the interaction of pulmonary surfactant composed of
phospholipids and proteins with nanometric alumina (Al2O3) in the context of
lung exposure and nanotoxicity. We study the bulk properties of
phospholipid/nanoparticle dispersions and determine the nature of their
interactions. The clinical surfactant Curosurf, both native and extruded, and a
protein-free surfactant are investigated. The phase behavior of mixed
surfactant/particle dispersions was determined by optical and electron
microscopy, light scattering and zeta potential measurements. It exhibits broad
similarities with that of strongly interacting nanosystems such as polymers,
proteins or particles, and supports the hypothesis of electrostatic
complexation. At a critical stoichiometry, micron sized aggregates arising from
the association between oppositely charged vesicles and nanoparticles are
formed. Contrary to the models of lipoprotein corona or of particle wrapping,
our work shows that vesicles maintain their structural integrity and trap the
particles at their surfaces. The agglomeration of particles in surfactant phase
is a phenomenon of importance since it could change the interactions of the
particles with lung cells.Comment: 19 pages 9 figure
Detecting the presence of large buildings in natural images
This paper addresses the issue of classification of lowlevel
features into high-level semantic concepts for the purpose of semantic annotation of consumer photographs. We adopt a multi-scale approach that relies on edge detection to extract an edge orientation-based feature description of the image, and apply an SVM learning technique to infer the presence of a dominant building object in a general purpose collection of digital photographs. The approach exploits prior knowledge on the image context through an assumption that all input images are �outdoor�, i.e. indoor/outdoor classification (the context determination stage) has been performed. The proposed approach is validated on a diverse dataset of 1720 images and its performance compared with that of the MPEG-7 edge histogram descriptor
Relating visual and semantic image descriptors
This paper addresses the automatic analysis of visual content and extraction of metadata beyond pure visual descriptors. Two approaches are described: Automatic Image Annotation (AIA) and Confidence Clustering (CC). AIA attempts to automatically classify images based on two binary classifiers and is
designed for the consumer electronics domain. Contrastingly, the CC approach does not attempt to assign a unique label to images but rather to organise the database based on concepts
The aceToolbox: low-level audiovisual feature extraction for retrieval and classification
In this paper we present an overview of a software platform
that has been developed within the aceMedia project,
termed the aceToolbox, that provides global and local lowlevel feature extraction from audio-visual content. The toolbox is based on the MPEG-7 eXperimental Model (XM),
with extensions to provide descriptor extraction from arbitrarily shaped image segments, thereby supporting local descriptors reflecting real image content. We describe the architecture of the toolbox as well as providing an overview of the descriptors supported to date. We also briefly describe the segmentation algorithm provided. We then demonstrate the usefulness of the toolbox in the context of two different content processing scenarios: similarity-based retrieval in large collections and scene-level classification of still images
Exploiting context information to aid landmark detection in SenseCam images
In this paper, we describe an approach designed to exploit
context information in order to aid the detection of landmark images from a large collection of photographs. The
photographs were generated using Microsoft’s SenseCam, a
device designed to passively record a visual diary and cover
a typical day of the user wearing the camera. The proliferation of digital photos along with the associated problems of managing and organising these collections provide the background motivation for this work. We believe more ubiquitious cameras, such as SenseCam, will become the norm in the future and the management of the volume of data generated by such devices is a key issue. The goal of the work reported here is to use context information to assist in the detection of landmark images or sequences of images from the thousands of photos taken daily by SenseCam. We will achieve this by analysing the images using low-level MPEG-7 features along with metadata provided by SenseCam, followed by simple clustering to identify the landmark images
Fusing MPEG-7 visual descriptors for image classification
This paper proposes three content-based image classification techniques based on fusing various low-level MPEG-7 visual descriptors. Fusion is necessary as descriptors would be otherwise incompatible and inappropriate to directly include e.g. in a Euclidean distance. Three approaches are described: A “merging” fusion combined with an SVM classifier, a back-propagation fusion combined with a KNN classifier and a Fuzzy-ART neurofuzzy network. In the latter case, fuzzy rules can be extracted in an effort to bridge the “semantic gap” between the low-level descriptors and the high-level semantics of an image. All networks were evaluated using content from the repository of the aceMedia project1 and more specifically in a beach/urban scene classification problem
- …