984 research outputs found
AuE-IPA: An AU Engagement Based Infant Pain Assessment Method
Recent studies have found that pain in infancy has a significant impact on
infant development, including psychological problems, possible brain injury,
and pain sensitivity in adulthood. However, due to the lack of specialists and
the fact that infants are unable to express verbally their experience of pain,
it is difficult to assess infant pain. Most existing infant pain assessment
systems directly apply adult methods to infants ignoring the differences
between infant expressions and adult expressions. Meanwhile, as the study of
facial action coding system continues to advance, the use of action units (AUs)
opens up new possibilities for expression recognition and pain assessment. In
this paper, a novel AuE-IPA method is proposed for assessing infant pain by
leveraging different engagement levels of AUs. First, different engagement
levels of AUs in infant pain are revealed, by analyzing the class activation
map of an end-to-end pain assessment model. The intensities of top-engaged AUs
are then used in a regression model for achieving automatic infant pain
assessment. The model proposed is trained and experimented on YouTube
Immunization dataset, YouTube Blood Test dataset, and iCOPEVid dataset. The
experimental results show that our AuE-IPA method is more applicable to infants
and possesses stronger generalization ability than end-to-end assessment model
and the classic PSPI metric
Building Machines That Learn and Think Like People
Recent progress in artificial intelligence (AI) has renewed interest in
building systems that learn and think like people. Many advances have come from
using deep neural networks trained end-to-end in tasks such as object
recognition, video games, and board games, achieving performance that equals or
even beats humans in some respects. Despite their biological inspiration and
performance achievements, these systems differ from human intelligence in
crucial ways. We review progress in cognitive science suggesting that truly
human-like learning and thinking machines will have to reach beyond current
engineering trends in both what they learn, and how they learn it.
Specifically, we argue that these machines should (a) build causal models of
the world that support explanation and understanding, rather than merely
solving pattern recognition problems; (b) ground learning in intuitive theories
of physics and psychology, to support and enrich the knowledge that is learned;
and (c) harness compositionality and learning-to-learn to rapidly acquire and
generalize knowledge to new tasks and situations. We suggest concrete
challenges and promising routes towards these goals that can combine the
strengths of recent neural network advances with more structured cognitive
models.Comment: In press at Behavioral and Brain Sciences. Open call for commentary
proposals (until Nov. 22, 2016).
https://www.cambridge.org/core/journals/behavioral-and-brain-sciences/information/calls-for-commentary/open-calls-for-commentar
Multi-Channel Neural Network for Assessing Neonatal Pain from Videos
Neonates do not have the ability to either articulate pain or communicate it
non-verbally by pointing. The current clinical standard for assessing neonatal
pain is intermittent and highly subjective. This discontinuity and subjectivity
can lead to inconsistent assessment, and therefore, inadequate treatment. In
this paper, we propose a multi-channel deep learning framework for assessing
neonatal pain from videos. The proposed framework integrates information from
two pain indicators or channels, namely facial expression and body movement,
using convolutional neural network (CNN). It also integrates temporal
information using a recurrent neural network (LSTM). The experimental results
prove the efficiency and superiority of the proposed temporal and multi-channel
framework as compared to existing similar methods.Comment: Accepted to IEEE SMC 201
Automatic detection of alarm sounds in a noisy hospital environment using model and non-model based approaches
Article publicat sense revisió per parells a ArxivIn the noisy acoustic environment of a Neonatal Intensive Care Unit (NICU) there is a variety of alarms, which are frequently triggered by the biomedical equipment. In this paper different approaches for automatic detection of those sound alarms are presented and compared: 1) a non-model-based approach that employs signal processing techniques; 2) a model-based approach based on neural networks; and 3) an approach that combines both non-model and model-based approaches. The performance of the developed detection systems that follow each of those approaches is assessed, analysed and compared both at the frame level and at the event level by using an audio database recorded in a real-world hospital environment.Preprin
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