![Loading...](https://link.springer.com/static/c4a417b97a76cc2980e3c25e2271af3129e08bbe/images/pdf-preview/spacer.gif)
233 Result(s)
-
Article
O2ath: an OpenMP offloading toolkit for the sunway heterogeneous manycore platform
The next generation Sunway supercomputer employs the SW26010pro processor, which features a specialized on-chip heterogeneous architecture. Applications with significant hotspots can benefit from the great com...
-
Article
Multi-object reconstruction of plankton digital holograms
Plankton is the base of the ocean ecosystem and is very sensitive to changes in their environment. Thus, monitoring the status of plankton in-situ has incredible importance for environmental study. Hologram is on...
-
Article
GroupMO: a memory-augmented meta-optimized model for group recommendation
Group recommendation aims to suggest desired items for a group of users. Existing methods can achieve inspiring results in predicting the group preferences in data-rich groups. However, they could be ineffecti...
-
Article
Open-set learning under covariate shift
Open-set learning deals with the testing distribution where there exist samples from the classes that are unseen during training. They aim to classify the seen classes and recognize the unseen classes. Previou...
-
Article
Open AccessAn automatic method using MFCC features for sleep stage classification
Sleep stage classification is a necessary step for diagnosing sleep disorders. Generally, experts use traditional methods based on every 30 seconds (s) of the biological signals, such as electrooculograms (EOG...
-
Article
Numerical stability analysis of spatial-temporal fully discrete scheme for time-fractional delay Schrödinger equations
We consider the numerical stability problem for fractional delay Schrödinger equations involving a Caputo fractional derivative in time, which is developed by Galerkin finite element method (FEM) in space and ...
-
Chapter and Conference Paper
A Framework for Applying Kansei Engineering Principles in the Design of Small Household Appliances
The demand for added value in small household appliances gradually increased. However, existing theoretical design methods often struggled to achieve satisfactory results in the practical design of small house...
-
Chapter and Conference Paper
Professional Text Review Under Limited Sampling Constraints
Text review is a task that determines whether the knowledge expression in a student answer is consistent with a given reference answer. In the professional scenarios, the number of labeled samples is limited, ...
-
Chapter and Conference Paper
CTL-I: Infrared Few-Shot Learning via Omnidirectional Compatible Class-Incremental
Accommodating infrared novel class in deep learning models without sacrificing prior knowledge of base class is a challenging task , especially when the available data for the novel class is limited. Existing ...
-
Chapter and Conference Paper
From Theory to Practice: Bridging the Gap in Future Kitchen Design for the Chinese Generation Z
This paper delves into the intricate nexus of kitchen design and the unique characteristics of Chinese Generation Z,
-
Chapter and Conference Paper
Unsupervised Event-to-Image Reconstruction Based on Domain Adaptation
Event camera outputs a stream of asynchronous events, which suffering from a lot of noise, sparse texture, and lacking of static background information. Existing event-to-image reconstruction (E2IR) methods mo...
-
Chapter and Conference Paper
Inversion Image Pairs for Anti-forensics in the Frequency Domain
Recent studies have demonstrated that generative models, such as Generative Adversarial Networks (GANs), leave discernible traces in their results. Based on these traces, several forensic methods have achieved...
-
Chapter and Conference Paper
DiffCMR: Fast Cardiac MRI Reconstruction with Diffusion Probabilistic Models
Performing magnetic resonance imaging (MRI) reconstruction from under-sampled k-space data can accelerate the procedure to acquire MRI scans and reduce patients’ discomfort. The reconstruction problem is usual...
-
Chapter and Conference Paper
Convolutional Graph Neural Networks for Predicting Enthalpy of Formation in Intermetallic Compounds Using Continuous Filter Convolutional Layers
Accurately predicting the enthalpy of formation for intermetallic compounds plays a crucial role in materials design and optimization. This article proposes a novel deep learning approach for predicting format...
-
Chapter and Conference Paper
AGGDN: A Continuous Stochastic Predictive Model for Monitoring Sporadic Time Series on Graphs
Monitoring data of real-world networked systems could be sparse and irregular due to node failures or packet loss, which makes it a challenge to model the continuous dynamics of system states. Representing a n...
-
Chapter and Conference Paper
A Video Face Recognition Leveraging Temporal Information Based on Vision Transformer
Video face recognition (VFR) has gained significant attention as a promising field combining computer vision and artificial intelligence, revolutionizing identity authentication and verification. Unlike tradit...
-
Chapter and Conference Paper
SSR-MGTI: Self-attention Sequential Recommendation Algorithm Based on Movie Genre Time Interval
As an important part of the recommendation system, movie recommendation system can recommend movies to users accurately according to their preferences. Traditional movie recommendation systems simply treat use...
-
Article
A viewpoint-guided prototype network for 3D shape classification
Multi-view learning methods have achieved remarkable results in 3D shape recognition. However, most of them focus on the visual feature extraction and feature aggregation, while viewpoints (spatial positions o...
-
Article
Open AccessA survey of uncertainty in deep neural networks
Over the last decade, neural networks have reached almost every field of science and become a crucial part of various real world applications. Due to the increasing spread, confidence in neural network predict...
-
Article
Towards optimized tensor code generation for deep learning on sunway many-core processor
The flourish of deep learning frameworks and hardware platforms has been demanding an efficient compiler that can shield the diversity in both software and hardware in order to provide application portability....