479 research outputs found
The Reflection and Countermeasures of University Sports Injury Accident
Sports injury accident is a common phenomenon in university physical education and extracurricular activities. In the proceedings of such cases, the court often makes a judgment on the principle of equitable liability in the case of no fault of both parties and these judgments lead to the heavy burden of universities, and block the development of sports activities. From the perspective of the legal relationship between students and universities, the nature of university sports injury accidents and the liability of tort liability, this paper insists on the application of fault responsibility principle in such injuries, clears the responsibility of all parties, and puts forward effective measures to reduce the occurrence of such accidents
Automated Segmentation of Pulmonary Lobes using Coordination-Guided Deep Neural Networks
The identification of pulmonary lobes is of great importance in disease
diagnosis and treatment. A few lung diseases have regional disorders at lobar
level. Thus, an accurate segmentation of pulmonary lobes is necessary. In this
work, we propose an automated segmentation of pulmonary lobes using
coordination-guided deep neural networks from chest CT images. We first employ
an automated lung segmentation to extract the lung area from CT image, then
exploit volumetric convolutional neural network (V-net) for segmenting the
pulmonary lobes. To reduce the misclassification of different lobes, we
therefore adopt coordination-guided convolutional layers (CoordConvs) that
generate additional feature maps of the positional information of pulmonary
lobes. The proposed model is trained and evaluated on a few publicly available
datasets and has achieved the state-of-the-art accuracy with a mean Dice
coefficient index of 0.947 0.044.Comment: ISBI 2019 (Oral
Causality-inspired Single-source Domain Generalization for Medical Image Segmentation
Deep learning models usually suffer from domain shift issues, where models
trained on one source domain do not generalize well to other unseen domains. In
this work, we investigate the single-source domain generalization problem:
training a deep network that is robust to unseen domains, under the condition
that training data is only available from one source domain, which is common in
medical imaging applications. We tackle this problem in the context of
cross-domain medical image segmentation. Under this scenario, domain shifts are
mainly caused by different acquisition processes. We propose a simple
causality-inspired data augmentation approach to expose a segmentation model to
synthesized domain-shifted training examples. Specifically, 1) to make the deep
model robust to discrepancies in image intensities and textures, we employ a
family of randomly-weighted shallow networks. They augment training images
using diverse appearance transformations. 2) Further we show that spurious
correlations among objects in an image are detrimental to domain robustness.
These correlations might be taken by the network as domain-specific clues for
making predictions, and they may break on unseen domains. We remove these
spurious correlations via causal intervention. This is achieved by resampling
the appearances of potentially correlated objects independently. The proposed
approach is validated on three cross-domain segmentation tasks: cross-modality
(CT-MRI) abdominal image segmentation, cross-sequence (bSSFP-LGE) cardiac MRI
segmentation, and cross-center prostate MRI segmentation. The proposed approach
yields consistent performance gains compared with competitive methods when
tested on unseen domains.Comment: Preprin
kNN-CTC: Enhancing ASR via Retrieval of CTC Pseudo Labels
The success of retrieval-augmented language models in various natural
language processing (NLP) tasks has been constrained in automatic speech
recognition (ASR) applications due to challenges in constructing fine-grained
audio-text datastores. This paper presents kNN-CTC, a novel approach that
overcomes these challenges by leveraging Connectionist Temporal Classification
(CTC) pseudo labels to establish frame-level audio-text key-value pairs,
circumventing the need for precise ground truth alignments. We further
introduce a skip-blank strategy, which strategically ignores CTC blank frames,
to reduce datastore size. kNN-CTC incorporates a k-nearest neighbors retrieval
mechanism into pre-trained CTC ASR systems, achieving significant improvements
in performance. By incorporating a k-nearest neighbors retrieval mechanism into
pre-trained CTC ASR systems and leveraging a fine-grained, pruned datastore,
kNN-CTC consistently achieves substantial improvements in performance under
various experimental settings. Our code is available at
https://github.com/NKU-HLT/KNN-CTC.Comment: Accepted by ICASSP 202
The impact of ESG information disclosure quality on firm value
With green development advocated globally, China has firstly proposed a goal of carbon neutrality and carbon peak. Based on sustainable development theory, signal transmission theory, information asymmetry theory and stakeholder theory, this paper had used the data of 638 A-share listed companies in China from 2018 to 2020 to empirically analysed the relationship between ESG information disclosure quality and firm value. The study had concluded that the ESG quality is positively correlated with firm value. Although the impact of environment (E) and society (S) on firm value is greater than that of governance (G), the improvement of ESG split indicators will increase firm value. Finally, this paper had put forward suggestions for the firms and the government respectively
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