Few-shot Calligraphy Style Learning

kono-dada/xysffusion 26 Apr 2024

We introduced "Presidifussion," a novel approach to learning and replicating the unique style of calligraphy of President Xu, using a pretrained diffusion model adapted through a two-stage training process.

0
26 Apr 2024

Certified MaxSAT Preprocessing

coreo-group/maxpre2 26 Apr 2024

For SAT, this is largely a solved problem thanks to the use of proof logging, meaning that solvers emit machine-verifiable proofs of (un)satisfiability to certify correctness.

0
26 Apr 2024

Weakly Supervised Training for Hologram Verification in Identity Documents

epitaresearchlab/pouliquen.24.icdar 26 Apr 2024

We propose a method to remotely verify the authenticity of Optically Variable Devices (OVDs), often referred to as ``holograms'', in identity documents.

1
26 Apr 2024

Domain Adaptive and Fine-grained Anomaly Detection for Single-cell Sequencing Data and Beyond

catchxu/acsleuth 26 Apr 2024

In response, we propose ACSleuth, a novel, reconstruction deviation-guided generative framework that integrates the detection, domain adaptation, and fine-grained annotating of anomalous cells into a methodologically cohesive workflow.

3
26 Apr 2024

Ag2Manip: Learning Novel Manipulation Skills with Agent-Agnostic Visual and Action Representations

Xiaoyao-Li/Ag2Manip 26 Apr 2024

Autonomous robotic systems capable of learning novel manipulation tasks are poised to transform industries from manufacturing to service automation.

2
26 Apr 2024

A Continuous Relaxation for Discrete Bayesian Optimization

machinelearninglifescience/corel 26 Apr 2024

To optimize efficiently over discrete data and with only few available target observations is a challenge in Bayesian optimization.

0
26 Apr 2024

Unleashing the Potential of Fractional Calculus in Graph Neural Networks with FROND

zknus/iclr2024-frond 26 Apr 2024

We introduce the FRactional-Order graph Neural Dynamical network (FROND), a new continuous graph neural network (GNN) framework.

1
26 Apr 2024

FairGT: A Fairness-aware Graph Transformer

yushuowiki/fairgt 26 Apr 2024

The design of Graph Transformers (GTs) generally neglects considerations for fairness, resulting in biased outcomes against certain sensitive subgroups.

0
26 Apr 2024

Making Better Use of Unlabelled Data in Bayesian Active Learning

fbickfordsmith/epig 26 Apr 2024

Fully supervised models are predominant in Bayesian active learning.

20
26 Apr 2024

Software Vulnerability Prediction in Low-Resource Languages: An Empirical Study of CodeBERT and ChatGPT

lhmtriet/llm4vul 26 Apr 2024

Aims: We conduct an empirical study to evaluate the impact of SV data scarcity in emerging languages on the state-of-the-art SV prediction model and investigate potential solutions to enhance the performance.

1
26 Apr 2024