290 research outputs found
Attribute Artifacts Removal for Geometry-based Point Cloud Compression
Geometry-based point cloud compression (G-PCC) can achieve remarkable
compression efficiency for point clouds. However, it still leads to serious
attribute compression artifacts, especially under low bitrate scenarios. In
this paper, we propose a Multi-Scale Graph Attention Network (MS-GAT) to remove
the artifacts of point cloud attributes compressed by G-PCC. We first construct
a graph based on point cloud geometry coordinates and then use the Chebyshev
graph convolutions to extract features of point cloud attributes. Considering
that one point may be correlated with points both near and far away from it, we
propose a multi-scale scheme to capture the short- and long-range correlations
between the current point and its neighboring and distant points. To address
the problem that various points may have different degrees of artifacts caused
by adaptive quantization, we introduce the quantization step per point as an
extra input to the proposed network. We also incorporate a weighted graph
attentional layer into the network to pay special attention to the points with
more attribute artifacts. To the best of our knowledge, this is the first
attribute artifacts removal method for G-PCC. We validate the effectiveness of
our method over various point clouds. Objective comparison results show that
our proposed method achieves an average of 9.74% BD-rate reduction compared
with Predlift and 10.13% BD-rate reduction compared with RAHT. Subjective
comparison results present that visual artifacts such as color shifting,
blurring, and quantization noise are reduced
Hesitant Fuzzy Soft Set and Its Applications in Multicriteria Decision Making
Molodtsov’s soft set theory is a newly emerging mathematical tool to handle uncertainty. However, the classical soft sets are not appropriate to deal with imprecise and fuzzy parameters. This paper aims to extend the classical soft sets to hesitant fuzzy soft sets which are combined by the soft sets and hesitant fuzzy sets. Then, the complement, “AND”, “OR”, union and intersection operations are defined on hesitant fuzzy soft sets. The basic properties such as DeMorgan’s laws and the relevant laws of hesitant fuzzy soft sets are proved. Finally, with the help of level soft set, the hesitant fuzzy soft sets are applied to a decision making problem and the effectiveness is proved by a numerical example
Bidirectional optical non-reciprocity in a multi-mode cavity optomechanical system
Optical non-reciprocity, a phenomenon that allows unidirectional flow of
optical field is pivoted on the time reversal symmetry breaking. The symmetry
breaking happens in the cavity optomechanical system (COS) due to non uniform
radiation pressure as a result of light-matter interaction, and is crucial in
building non-reciprocal optical devices. In our proposed COS, we study the
non-reciprocal transport of optical signals across two ports via three optical
modes optomechanically coupled to the mechanical excitations of two
nano-mechanical resonators (NMRs) under the influence of strong classical drive
fields and weak probe fields. By tuning different system parameters, we
discover the conversion of reciprocal to non-reciprocal signal transmission. We
reveal perfect nonreciprocal transmission of output fields when the effective
cavity detuning parameters are near resonant to the NMRs' frequencies. The
unidirectional non-reciprocal signal transport is robust to the optomechanical
coupling parameters at resonance conditions. Moreover, the cavities' photon
loss rates play an inevitable role in the unidirectional flow of signal across
the two ports. Bidirectional transmission can be fully controlled by the phase
changes associated with the incoming probe and drive fields via two ports. Our
scheme may provide a foundation for the compact non-reciprocal communication
and quantum information processing, thus enabling new devices that route
photons in unconventional ways such as all-optical diodes, optical transistors
and optical switches
Offline and Online Optical Flow Enhancement for Deep Video Compression
Video compression relies heavily on exploiting the temporal redundancy
between video frames, which is usually achieved by estimating and using the
motion information. The motion information is represented as optical flows in
most of the existing deep video compression networks. Indeed, these networks
often adopt pre-trained optical flow estimation networks for motion estimation.
The optical flows, however, may be less suitable for video compression due to
the following two factors. First, the optical flow estimation networks were
trained to perform inter-frame prediction as accurately as possible, but the
optical flows themselves may cost too many bits to encode. Second, the optical
flow estimation networks were trained on synthetic data, and may not generalize
well enough to real-world videos. We address the twofold limitations by
enhancing the optical flows in two stages: offline and online. In the offline
stage, we fine-tune a trained optical flow estimation network with the motion
information provided by a traditional (non-deep) video compression scheme, e.g.
H.266/VVC, as we believe the motion information of H.266/VVC achieves a better
rate-distortion trade-off. In the online stage, we further optimize the latent
features of the optical flows with a gradient descent-based algorithm for the
video to be compressed, so as to enhance the adaptivity of the optical flows.
We conduct experiments on a state-of-the-art deep video compression scheme,
DCVC. Experimental results demonstrate that the proposed offline and online
enhancement together achieves on average 12.8% bitrate saving on the tested
videos, without increasing the model or computational complexity of the decoder
side.Comment: 9 pages, 6 figure
TQ-Net: Mixed Contrastive Representation Learning For Heterogeneous Test Questions
Recently, more and more people study online for the convenience of access to
massive learning materials (e.g. test questions/notes), thus accurately
understanding learning materials became a crucial issue, which is essential for
many educational applications. Previous studies focus on using language models
to represent the question data. However, test questions (TQ) are usually
heterogeneous and multi-modal, e.g., some of them may only contain text, while
others half contain images with information beyond their literal description.
In this context, both supervised and unsupervised methods are difficult to
learn a fused representation of questions. Meanwhile, this problem cannot be
solved by conventional methods such as image caption, as the images may contain
information complementary rather than duplicate to the text. In this paper, we
first improve previous text-only representation with a two-stage unsupervised
instance level contrastive based pre-training method (MCL: Mixture Unsupervised
Contrastive Learning). Then, TQ-Net was proposed to fuse the content of images
to the representation of heterogeneous data. Finally, supervised contrastive
learning was conducted on relevance prediction-related downstream tasks, which
helped the model to learn the representation of questions effectively. We
conducted extensive experiments on question-based tasks on large-scale,
real-world datasets, which demonstrated the effectiveness of TQ-Net and improve
the precision of downstream applications (e.g. similar questions +2.02% and
knowledge point prediction +7.20%). Our code will be available, and we will
open-source a subset of our data to promote the development of relative
studies.Comment: This paper has been accepted for the AAAI2023 AI4Edu Worksho
Trapezoidal Intuitionistic Fuzzy Multiattribute Decision Making Method Based on Cumulative Prospect Theory and Dempster-Shafer Theory
With respect to decision making problems under uncertainty, a trapezoidal intuitionistic fuzzy multiattribute decision making method based on cumulative prospect theory and Dempster-Shafer theory is developed. The proposed method reflects behavioral characteristics of decision makers, information fuzziness under uncertainty, and uncertain attribute weight information. Firstly, distance measurement and comparison rule of trapezoidal intuitionistic fuzzy numbers are used to derive value function under trapezoidal intuitionistic fuzzy environment. Secondly, the value function and decision weight function are used to calculate prospect values of attributes for each alternative. Then considering uncertain attribute weight information, Dempster-Shafer theory is used to aggregate prospect values for each alternative, and overall prospect values are obtained and thus the alternatives are sorted consequently. Finally, an illustrative example shows the feasibility of the proposed method
Cost-effective photonic super-resolution millimeter-wave joint radar-communication system using self-coherent detection
A cost-effective millimeter-wave (MMW) joint radar-communication (JRC) system
with super resolution is proposed and experimentally demonstrated, using
optical heterodyne up-conversion and self-coherent detection down-conversion
techniques. The point lies in the designed coherent dual-band constant envelope
linear frequency modulation-orthogonal frequency division multiplexing
(LFM-OFDM) signal with opposite phase modulation indexes for the JRC system.
Then the self-coherent detection, as a simple and low-cost means, is
accordingly facilitated for both de-chirping of MMW radar and frequency
down-conversion reception of MMW communication, which circumvents the costly
high-speed mixers along with MMW local oscillators and more significantly
achieves the real-time decomposition of radar and communication information.
Furthermore, a super resolution radar range profile is realized through the
coherent fusion processing of dual-band JRC signal. In experiments, a dual-band
LFM-OFDM JRC signal centered at 54-GHz and 61-GHz is generated. The dual bands
are featured with an identical instantaneous bandwidth of 2 GHz and carry an
OFDM signal of 1 GBaud, which help to achieve a 6-Gbit/s data rate for
communication and a 1.76-cm range resolution for radar
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