558 research outputs found
Semantically Consistent Regularization for Zero-Shot Recognition
The role of semantics in zero-shot learning is considered. The effectiveness
of previous approaches is analyzed according to the form of supervision
provided. While some learn semantics independently, others only supervise the
semantic subspace explained by training classes. Thus, the former is able to
constrain the whole space but lacks the ability to model semantic correlations.
The latter addresses this issue but leaves part of the semantic space
unsupervised. This complementarity is exploited in a new convolutional neural
network (CNN) framework, which proposes the use of semantics as constraints for
recognition.Although a CNN trained for classification has no transfer ability,
this can be encouraged by learning an hidden semantic layer together with a
semantic code for classification. Two forms of semantic constraints are then
introduced. The first is a loss-based regularizer that introduces a
generalization constraint on each semantic predictor. The second is a codeword
regularizer that favors semantic-to-class mappings consistent with prior
semantic knowledge while allowing these to be learned from data. Significant
improvements over the state-of-the-art are achieved on several datasets.Comment: Accepted to CVPR 201
Violência contra as mulheres: tempo de actuar
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Editorial: The impact of stress on cognition and motivation
This work was supported by FEDER funds, through the
Competitiveness Factors Operational Programme (COMPETE),
and by National funds, through the Foundation for Science and
Technology (FCT), under the scope of the project POCI-01-
0145-FEDER-007038. This article has been developed under the
scope of the project NORTE-01-0145-FEDER-000013, supported
by the Northern Portugal Regional Operational Programme
(NORTE 2020), under the Portugal 2020 Partnership Agreement,
through the European Regional Development Fund (FEDER),
and the BIAL foundation, Porto, Portugal (grant number
PT/FB/BL-2016-206)
A Closer Look at Weakly-Supervised Audio-Visual Source Localization
Audio-visual source localization is a challenging task that aims to predict
the location of visual sound sources in a video. Since collecting ground-truth
annotations of sounding objects can be costly, a plethora of weakly-supervised
localization methods that can learn from datasets with no bounding-box
annotations have been proposed in recent years, by leveraging the natural
co-occurrence of audio and visual signals. Despite significant interest,
popular evaluation protocols have two major flaws. First, they allow for the
use of a fully annotated dataset to perform early stopping, thus significantly
increasing the annotation effort required for training. Second, current
evaluation metrics assume the presence of sound sources at all times. This is
of course an unrealistic assumption, and thus better metrics are necessary to
capture the model's performance on (negative) samples with no visible sound
sources. To accomplish this, we extend the test set of popular benchmarks,
Flickr SoundNet and VGG-Sound Sources, in order to include negative samples,
and measure performance using metrics that balance localization accuracy and
recall. Using the new protocol, we conducted an extensive evaluation of prior
methods, and found that most prior works are not capable of identifying
negatives and suffer from significant overfitting problems (rely heavily on
early stopping for best results). We also propose a new approach for visual
sound source localization that addresses both these problems. In particular, we
found that, through extreme visual dropout and the use of momentum encoders,
the proposed approach combats overfitting effectively, and establishes a new
state-of-the-art performance on both Flickr SoundNet and VGG-Sound Source. Code
and pre-trained models are available at https://github.com/stoneMo/SLAVC
A Systematic Review of Teacher-Facing Dashboards for Collaborative Learning Activities and Tools in Online Higher Education
Dashboard for online higher education support monitoring and evaluation of students’ interactions,
but mostly limited to interaction occurring within learning management systems. In this study,
we sought to find which collaborative learning activities and tools in online higher education are
included in teaching dashboards. By following Kitchenham’s procedure for systematic reviews,
36 papers were identified according to this focus and analysed. The results identify dashboards
supporting collaborative tools, both synchronous and asynchronous, along categories such as learning
management systems, communication tools, social media, computer programming code management
platforms, project management platforms, and collaborative writing tools. Dashboard support was
also found for collaborative activities, grouped under four categories of forum discussion activities,
three categories of communication activities and four categories of collaborative editing/sharing
activities, though most of the analysed dashboards only provide support for no more than two or
three collaborative tools. This represents a need for further research on how to develop dashboards
that combine data from a more diverse set of collaborative activities and tools.This work was supported by the TRIO project funded by the European Union’s Erasmus+ KA220-ADU – Cooperation partnerships in adult education programme under grant agreement no. KA220-ADU-1B9975F8.info:eu-repo/semantics/publishedVersio
Design and testing of a rear wing for a Formula Student car
Tese de mestrado integrado, Engenharia FÃsica, 2022, Universidade de Lisboa, Faculdade de CiênciasFormula Student teams go to extreme lengths to develop their aerodynamic packages, as it is
a key factor to enhance car performance. The yearly objectives for the aerodynamic department
are usually supplied by the vehicle dynamics department through lap time simulations. However,
these usually are not capable of relating car attitude to aerodynamic performance and do not
assume any relation between the aerodynamic coefficients.
A simple aerodynamic model relating the lift coefficient to the drag coefficient and mass
was added to the point mass simulator from the FST Lisboa vehicle dynamics department, to
estimate the ideal aerodynamic coefficients and maximize vehicle performance for the current
car design.
By applying the results from the upgraded point mass simulator, a maximum theoretical
lift, drag and mass were obtained. Through these results, a new rear wing concept, based
on using airfoils as endplates was adopted, in order to create a design that would suit the new
aerodynamic targets. Initially a low drag design was tested, however, preliminary results showed
that due to high car mass it was not a viable design choice to follow. The final choice was to
develop a high downforce rear wing.
The resulting design was then validated using IST’s aeroacoustic wind tunnel, to assess its
on-track performance. During this test, the aerodynamic forces applied on the whole vehicle
were measured. A qualitative analysis of the results showed that the numerical simulations
captured the experimental trends. Wool tufts were used as a flow visualization technique, these
showed some discrepancies between the CFD simulations and experimental results, which were
attributed to the simplifications made in both the numerical and experimental models.
The implementation of the new aerodynamic model proved effective, as a design which
yielded increase performance was obtained. Correlation between the CFD and on-track results
is still limited due to modelling limitations in both experimental and numerical domains
Coprophagia and Entomophagia in a Patient with Alcohol Related Dementia
Coprophagia and entomophagia are two phenomena not commonly reported in the medical literature and their occurrence is usually associated with mental disorders. We present the case of a 59-year-old man with a history of alcohol abuse who was evaluated due to cognitive deterioration and disturbed eating habits including feces and living insects. Organic causes were ruled out and an important cognitive impairment became evident on neuropsychological formal test. The behavior remitted after antipsychotic pharmacologic therapy and alcohol detoxification, leaving the diagnostic impression of alcohol related dementia. This report shows a rare association of these two conditions in a patient with dementia.info:eu-repo/semantics/publishedVersio
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