3,025 research outputs found
The Healthy Farms, Food and Communities Act: Policy Initiatives for the 2002 Farm Bill And the First Decade of the 21st Century
This policy document includes a legislative initiative to be incorporated into the 2002 Farm Bill, and a broader set of policy principles and legislation endorsed by CFSC. Both policy platforms create the basis for furthering the goals of healthy farms, healthy food, and, ultimately, healthy communities
A semantic characterization of the well-typed formulae of λ-calculus
AbstractA model-theoretic operation is characterized that preserves the property of being a model of typed λ-calculus (i.e., the result of applying it to a model of typed λ-calculus is another model of typed λ-calculus). An expression is well-typed iff the class of its models is closed under this operation
Foundations of Generalism: Symmetries, Non-individuals and Ontological Nihilism
The topic of this thesis is the metaphysical theory of generalism: the view that
the world is constituted by purely general facts. Whilst the connection may not be
immediately obvious, generalism is also touted as a qualitative metaphysics: a theory
that seeks to elevate, in some important metaphysical sense, the notion of qualities
(i.e. properties and relations) over that of objects. As such, generalism is just as well
individuated by its categorial commitmentsâits commitment to the fundamentality
of certain metaphysical categoriesâas it is by its construal of fundamental facts.
My aim in this thesis is to make explicit these connections, providing a proper
explication of the generalist position, as well as its motivations and its apparent
consequences. Beyond this, the thesis can also be read as an extended argument
in favour of individualism: the view that holds, contrary to generalism, that the
category of individual, or object, is at least as fundamental as that of property and
relation.
The subtitle of this thesis, âsymmetries, non-individuals and ontological nihilismâ,
alludes to the topic addressed by each of the three chapters. In chapter 1 I explicate and critique the generalistâs primary argument against individualism, one
based on the notion of a symmetry. In chapter 2 I investigate the tenability of a
position dubbed âquantifier generalismâ, a position that, I argue, can be further explicated through the notion of a non-individual. And in chapter 3 I turn to the most
widely-discussed form of generalism found in the literature: algebraic generalism, a
(purported) form of ontological nihlism
Empirically Analyzing the Effect of Dataset Biases on Deep Face Recognition Systems
It is unknown what kind of biases modern in the wild face datasets have
because of their lack of annotation. A direct consequence of this is that total
recognition rates alone only provide limited insight about the generalization
ability of a Deep Convolutional Neural Networks (DCNNs). We propose to
empirically study the effect of different types of dataset biases on the
generalization ability of DCNNs. Using synthetically generated face images, we
study the face recognition rate as a function of interpretable parameters such
as face pose and light. The proposed method allows valuable details about the
generalization performance of different DCNN architectures to be observed and
compared. In our experiments, we find that: 1) Indeed, dataset bias has a
significant influence on the generalization performance of DCNNs. 2) DCNNs can
generalize surprisingly well to unseen illumination conditions and large
sampling gaps in the pose variation. 3) Using the presented methodology we
reveal that the VGG-16 architecture outperforms the AlexNet architecture at
face recognition tasks because it can much better generalize to unseen face
poses, although it has significantly more parameters. 4) We uncover a main
limitation of current DCNN architectures, which is the difficulty to generalize
when different identities to not share the same pose variation. 5) We
demonstrate that our findings on synthetic data also apply when learning from
real-world data. Our face image generator is publicly available to enable the
community to benchmark other DCNN architectures.Comment: Accepted to CVPR 2018 Workshop on Analysis and Modeling of Faces and
Gestures (AMFG
An assessment of land cover changes using GIS and remote sensing : a case study of the uMhlathuze Municipality, KwaZulu-Natal, South Africa.
Thesis (M.Env.Dev.)-University of KwaZulu-Natal, Pietermaritzburg, 2005.Rapid growth of cities is a global phenomenon exerting much pressure on land resources and
causing associated environmental and social problems. Sustainability of land resources has
become a central issue since the Earth Summit in Rio de Janeiro in 1992. A better
understanding of the processes and patterns of land cover change will aid urban planners and
decision makers in guiding more environmentally conscious development. The objective of
this study was firstly, to determine the location and extent of land use and land cover changes
in the uMhlathuze municipality, KwaZulu-Natal, South Africa between 1992 and 2002, and
secondly, to predict the likely expansion of urban areas for the year 2012. The uMhlathuze
municipality has experienced rapid urban growth since 1976 when the South African Ports and
Railways Administration built a deep water harbour at Richards Bay, a town within the
municipality. Three Landsat satellite images were obtained for the years, 1992, 1997 and
2002. These images were classified into six classes representing the dominant land covers in
the area. A post classification change detection technique was used to determine the extent and
location of the changes taking place during the study period. Following this, a GIS-based land
cover change suitability model, GEOMOD2, was used to determine the likely distribution of
urban land cover in the year 2012. The model was validated using the 2002 image. Sugarcane
was found to expand by 129% between 1992 and 1997. Urban land covers increased by an
average of 24%, while forestry and woodlands decreased by 29% between 1992 and 1997.
Variation in rainfall on the study years and diversity in sugarcane growth states had an impact
on the classification accuracy. Overall accuracy in the study was 74% and the techniques gave
a good indication of the location and extent of changes taking place in the study site, and show
much promise in becoming a useful tool for regional planners and policy makers
Morphable Face Models - An Open Framework
In this paper, we present a novel open-source pipeline for face registration
based on Gaussian processes as well as an application to face image analysis.
Non-rigid registration of faces is significant for many applications in
computer vision, such as the construction of 3D Morphable face models (3DMMs).
Gaussian Process Morphable Models (GPMMs) unify a variety of non-rigid
deformation models with B-splines and PCA models as examples. GPMM separate
problem specific requirements from the registration algorithm by incorporating
domain-specific adaptions as a prior model. The novelties of this paper are the
following: (i) We present a strategy and modeling technique for face
registration that considers symmetry, multi-scale and spatially-varying
details. The registration is applied to neutral faces and facial expressions.
(ii) We release an open-source software framework for registration and
model-building, demonstrated on the publicly available BU3D-FE database. The
released pipeline also contains an implementation of an Analysis-by-Synthesis
model adaption of 2D face images, tested on the Multi-PIE and LFW database.
This enables the community to reproduce, evaluate and compare the individual
steps of registration to model-building and 3D/2D model fitting. (iii) Along
with the framework release, we publish a new version of the Basel Face Model
(BFM-2017) with an improved age distribution and an additional facial
expression model
RĂ€umliche und zeitliche Visualisierung als Smart-City-Planungswerkzeug
Die steigende Bevölkerung und der starke Zuzug in die urbanen BallungsrĂ€ume ist eine groĂe
Herausforderung fĂŒr die Akteure der Planungswelt. Um ressourcenschonende Planungen voranzutreiben, ist
eine innere Entwicklung der urbanen Systeme zielfĂŒhrend. Dabei ist neben der AufspĂŒrung und Nutzung von
FlÀchenreserven, die Nutzung und der Ausbau bestehender Versorgungsinfrastruktursysteme eine
Möglichkeit fĂŒr nachhaltige Entwicklungen. Dies stellt eine komplexe Planungsaufgabe fĂŒr Planer und
EntscheidungstrÀger dar, die das Zusammenwirken von Planungsakteuren unterschiedlichster DomÀnen
erfordert. Innerhalb des interdisziplinÀren Forschungsprojektes URBEM (Urbanes Energie- und
MobilitĂ€tssystem) wurde ein visuelles Planungs- und EntscheidungsunterstĂŒtzungswerkzeug, die URBEMVisualisierung,
entwickelt. Diese webbasierte Umgebung bietet eine Arbeits- und Kommunikationsplattform
fĂŒr DomĂ€nenexperten und Stakeholder zur UnterstĂŒtzung komplexer Planungsprozesse. Die URBEMVisualisierung
erlaubt domĂ€nenspezifische Simulationsergebnisse rĂ€umlich zu verorten, visuelle Ăbersichten
zu generieren und ein urbanes Gesamtsystem mit Hilfe der rĂ€umlichen Ăberlagerung von Informationen
unterschiedlichster VersorgungstrÀgerstrukturen im Bereich Energie und MobilitÀt zu untersuchen. Dies
bietet den Planern eine Grundlage um Probleme im Raum und in der Zeit fest zu machen und gezielte
MaĂnahmen zur Entwicklung smarter LebensrĂ€ume aufzuzeigen. Die Möglichkeiten der URBEM
Visualisierung werden im folgenden Beitrag anhand von Modellergebnissen aus der DomÀne MobilitÀt
illustriert
Informed MCMC with Bayesian Neural Networks for Facial Image Analysis
Computer vision tasks are difficult because of the large variability in the
data that is induced by changes in light, background, partial occlusion as well
as the varying pose, texture, and shape of objects. Generative approaches to
computer vision allow us to overcome this difficulty by explicitly modeling the
physical image formation process. Using generative object models, the analysis
of an observed image is performed via Bayesian inference of the posterior
distribution. This conceptually simple approach tends to fail in practice
because of several difficulties stemming from sampling the posterior
distribution: high-dimensionality and multi-modality of the posterior
distribution as well as expensive simulation of the rendering process. The main
difficulty of sampling approaches in a computer vision context is choosing the
proposal distribution accurately so that maxima of the posterior are explored
early and the algorithm quickly converges to a valid image interpretation. In
this work, we propose to use a Bayesian Neural Network for estimating an image
dependent proposal distribution. Compared to a standard Gaussian random walk
proposal, this accelerates the sampler in finding regions of the posterior with
high value. In this way, we can significantly reduce the number of samples
needed to perform facial image analysis.Comment: Accepted to the Bayesian Deep Learning Workshop at NeurIPS 201
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