644 research outputs found
All Too Well
All Too Well is a 2D animation graduate thesis film, with a length of 6 minutes and 49 seconds. The production phase went from September 2018 to January 2020.
A father who lost his son in a car accident recreates the family by bringing an artificial intelligence boy into the home to replace the lost son. Not only does their relationship fail to heal the father\u27s broken heart, but it also often brings back painful memories of his real boy. This only makes him realize that the robot son cannot replace his real son. So, he turns the power off of the robot son and deeply grieves. The mother witnesses her husband’s actions, approaches him, and then turns his power off. Themes of loss and healing in the age of artificial intelligence and the use of robots to fill our need for love and normal relationships are central to this abstracted narrative.
The major software used during the entire production process include: Adobe Photoshop, Adobe After Effects, Adobe Premiere, TVPaint and MOHO. The original music is a score by KaMan Chang. The final output format is 1080HD.
This paper will retrace the making of All Too Well and share the personal experience during its creation
Two-Dimensional Halide Perovskites for Emerging New- Generation Photodetectors
Compared to their conventional three-dimensional (3D) counterparts, two-dimensional (2D) halide perovskites have attracted more interests recently in a variety of areas related to optoelectronics because of their unique structural characteristics and enhanced performances. In general, there are two distinct types of 2D halide perovskites. One represents those perovskites with an intrinsic layered crystal structure (i.e. MX6 layers, MÂ =Â metal and XÂ =Â Cl, Br, I), the other defines the perovskites with a 2D nanostructured morphology such as nanoplatelets and nanosheets. Recent studies have shown that 2D halide perovskites hold promising potential for the development of new-generation photodetectors, mainly arising from their highly efficient photoluminescence and absorbance, color tunability in the visible-light range and relatively high stability. In this chapter, we present the summary and highlights of latest researches on these two types of 2D halide perovskites for developing photodetectors, with an emphasis on synthesis methods, structural characterization, optoelectronic properties, and theoretical analysis and simulations. We also discuss the current challenging issues and future perspective. We hope this chapter would add new elements for understanding halide perovskite-based 2D materials and for developing their more efficient optoelectronic devices
: Zero-shot Style Transfer via Attention Rearrangement
Despite the remarkable progress in image style transfer, formulating style in
the context of art is inherently subjective and challenging. In contrast to
existing learning/tuning methods, this study shows that vanilla diffusion
models can directly extract style information and seamlessly integrate the
generative prior into the content image without retraining. Specifically, we
adopt dual denoising paths to represent content/style references in latent
space and then guide the content image denoising process with style latent
codes. We further reveal that the cross-attention mechanism in latent diffusion
models tends to blend the content and style images, resulting in stylized
outputs that deviate from the original content image. To overcome this
limitation, we introduce a cross-attention rearrangement strategy. Through
theoretical analysis and experiments, we demonstrate the effectiveness and
superiority of the diffusion-based ero-shot tyle
ransfer via ttention earrangement,
Z-STAR
Balancing the trade-off between cost and reliability for wireless sensor networks: a multi-objective optimized deployment method
The deployment of the sensor nodes (SNs) always plays a decisive role in the
system performance of wireless sensor networks (WSNs). In this work, we propose
an optimal deployment method for practical heterogeneous WSNs which gives a
deep insight into the trade-off between the reliability and deployment cost.
Specifically, this work aims to provide the optimal deployment of SNs to
maximize the coverage degree and connection degree, and meanwhile minimize the
overall deployment cost. In addition, this work fully considers the
heterogeneity of SNs (i.e. differentiated sensing range and deployment cost)
and three-dimensional (3-D) deployment scenarios. This is a multi-objective
optimization problem, non-convex, multimodal and NP-hard. To solve it, we
develop a novel swarm-based multi-objective optimization algorithm, known as
the competitive multi-objective marine predators algorithm (CMOMPA) whose
performance is verified by comprehensive comparative experiments with ten other
stateof-the-art multi-objective optimization algorithms. The computational
results demonstrate that CMOMPA is superior to others in terms of convergence
and accuracy and shows excellent performance on multimodal multiobjective
optimization problems. Sufficient simulations are also conducted to evaluate
the effectiveness of the CMOMPA based optimal SNs deployment method. The
results show that the optimized deployment can balance the trade-off among
deployment cost, sensing reliability and network reliability. The source code
is available on https://github.com/iNet-WZU/CMOMPA.Comment: 25 page
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