371 research outputs found
Towards Fully Decoupled End-to-End Person Search
End-to-end person search aims to jointly detect and re-identify a target
person in raw scene images with a unified model. The detection task unifies all
persons while the re-id task discriminates different identities, resulting in
conflict optimal objectives. Existing works proposed to decouple end-to-end
person search to alleviate such conflict. Yet these methods are still
sub-optimal on one or two of the sub-tasks due to their partially decoupled
models, which limits the overall person search performance. In this paper, we
propose to fully decouple person search towards optimal person search. A
task-incremental person search network is proposed to incrementally construct
an end-to-end model for the detection and re-id sub-task, which decouples the
model architecture for the two sub-tasks. The proposed task-incremental network
allows task-incremental training for the two conflicting tasks. This enables
independent learning for different objectives thus fully decoupled the model
for persons earch. Comprehensive experimental evaluations demonstrate the
effectiveness of the proposed fully decoupled models for end-to-end person
search.Comment: DICTA 202
Dissipative Gradient Descent Ascent Method: A Control Theory Inspired Algorithm for Min-max Optimization
Gradient Descent Ascent (GDA) methods for min-max optimization problems
typically produce oscillatory behavior that can lead to instability, e.g., in
bilinear settings. To address this problem, we introduce a dissipation term
into the GDA updates to dampen these oscillations. The proposed Dissipative GDA
(DGDA) method can be seen as performing standard GDA on a state-augmented and
regularized saddle function that does not strictly introduce additional
convexity/concavity. We theoretically show the linear convergence of DGDA in
the bilinear and strongly convex-strongly concave settings and assess its
performance by comparing DGDA with other methods such as GDA, Extra-Gradient
(EG), and Optimistic GDA. Our findings demonstrate that DGDA surpasses these
methods, achieving superior convergence rates. We support our claims with two
numerical examples that showcase DGDA's effectiveness in solving saddle point
problems
Differential Modulation for Short Packet Transmission in URLLC
One key feature of ultra-reliable low-latency communications (URLLC) in 5G is
to support short packet transmission (SPT). However, the pilot overhead in SPT
for channel estimation is relatively high, especially in high Doppler
environments. In this paper, we advocate the adoption of differential
modulation to support ultra-low latency services, which can ease the channel
estimation burden and reduce the power and bandwidth overhead incurred in
traditional coherent modulation schemes. Specifically, we consider a
multi-connectivity (MC) scheme employing differential modulation to enable
URLLC services. The popular selection combining and maximal ratio combining
schemes are respectively applied to explore the diversity gain in the MC
scheme. A first-order autoregressive model is further utilized to characterize
the time-varying nature of the channel. Theoretically, the maximum achievable
rate and minimum achievable block error rate under ergodic fading channels with
PSK inputs and perfect CSI are first derived by using the non-asymptotic
information-theoretic bounds. The performance of SPT with differential
modulation and MC schemes is then analysed by characterizing the effect of
differential modulation and time-varying channels as a reduction in the
effective SNR. Simulation results show that differential modulation does offer
a significant advantage over the pilot-assisted coherent scheme for SPT,
especially in high Doppler environments.Comment: 15 pages, 9 figure
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EZH2 RIP-seq Identifies Tissue-specific Long Non-coding RNAs.
BackgroundPolycomb Repressive Complex 2 (PRC2) catalyzes histone methylation at H3 Lys27, and plays crucial roles during development and diseases in numerous systems. Its catalytic subunit EZH2 represents a key nuclear target for long non-coding RNAs (lncRNAs) that emerging to be a novel class of epigenetic regulator and participate in diverse cellular processes. LncRNAs are characterized by high tissue-specificity; however, little is known about the tissue profile of the EZH2- interacting lncRNAs.ObjectiveHere we performed a global screening for EZH2-binding lncRNAs in tissues including brain, lung, heart, liver, kidney, intestine, spleen, testis, muscle and blood by combining RNA immuno- precipitation and RNA sequencing. We identified 1328 EZH2-binding lncRNAs, among which 470 were shared in at least two tissues while 858 were only detected in single tissue. An RNA motif with specific secondary structure was identified in a number of lncRNAs, albeit not in all EZH2-binding lncRNAs. The EZH2-binding lncRNAs fell into four categories including intergenic lncRNA, antisense lncRNA, intron-related lncRNA and promoter-related lncRNA, suggesting diverse regulations of both cis and trans-mechanisms. A promoter-related lncRNA Hnf1aos1 bound to EZH2 specifically in the liver, a feature same as its paired coding gene Hnf1a, further confirming the validity of our study. In addition to the well known EZH2-binding lncRNAs like Kcnq1ot1, Gas5, Meg3, Hotair and Malat1, majority of the lncRNAs were firstly reported to be associated with EZH2.ConclusionOur findings provide a profiling view of the EZH2-interacting lncRNAs across different tissues, and suggest critical roles of lncRNAs during cell differentiation and maturation
Spinal nerve segmentation method and dataset construction in endoscopic surgical scenarios
Endoscopic surgery is currently an important treatment method in the field of
spinal surgery and avoiding damage to the spinal nerves through video guidance
is a key challenge. This paper presents the first real-time segmentation method
for spinal nerves in endoscopic surgery, which provides crucial navigational
information for surgeons. A finely annotated segmentation dataset of
approximately 10,000 consec-utive frames recorded during surgery is constructed
for the first time for this field, addressing the problem of semantic
segmentation. Based on this dataset, we propose FUnet (Frame-Unet), which
achieves state-of-the-art performance by utilizing inter-frame information and
self-attention mechanisms. We also conduct extended exper-iments on a similar
polyp endoscopy video dataset and show that the model has good generalization
ability with advantageous performance. The dataset and code of this work are
presented at: https://github.com/zzzzzzpc/FUnet .Comment: Accepted by MICCAI 202
Nodeless superconductivity in the presence of spin-density wave in pnictide superconductors: The case of BaFeNiAs
The characteristics of Fe-based superconductors are manifested in their
electronic, magnetic properties, and pairing symmetry of the Cooper pair, but
the latter remain to be explored. Usually in these materials, superconductivity
coexists and competes with magnetic order, giving unconventional pairing
mechanisms. We report on the results of the bulk magnetization measurements in
the superconducting state and the low-temperature specific heat down to 0.4 K
for BaFeNiAs single crystals. The {electronic} specific
heat displays a pronounced anomaly at the superconducting transition
temperature and a small residual part {at low temperatures in the
superconducting state}. The normal-state Sommerfeld coefficient increases with
Ni doping for = 0.092, 0.096, and 0.10, which illustrates the competition
between magnetism and superconductivity. Our analysis of the temperature
dependence of the superconducting-state specific heat and the London
penetration depth provides strong evidence for a two-band -wave order
parameter. Further, the data of the London penetration depth calculated from
the lower critical field follow an exponential temperature dependence,
characteristic of a fully gapped superconductor. These observations clearly
show that the superconducting gap in the nearly optimally doped compounds is
nodeless.Comment: 11 pages, 5 figure
The association between FGF21 and diabetic erectile dysfunction: Evidence from clinical and animal studies
Erectile dysfunction (ED), a complication of diabetes mellitus (DM), affects 50–75% of men with diabetes. Fibroblast growth factor 21 (FGF21) is a liver-derived metabolic regulator which plays a role in insulin-independent glucose uptake in adipocytes. We designed a clinical study and an animal experiment to investigate the relationship between FGF21 and DM-induced ED. The clinical study enrolled 93 participants aged \u3e 18 years (61 patients with type 2 DM and 32 healthy controls) from Taian City Central Hospital (TCCH) in Shandong Province, China, amongst whom the association between serum FGF21 and diabetic ED was analyzed. To further validate this association, we developed animal model of diabetic ED using Sprague-Dawley (SD) rats. Serum FGF21 concentration and FGF21 mRNA expression in penile samples of the rats were determined with Western blotting and quantitative real-time PCR. Among the 93 participants, the level of serum FGF21 was negatively correlated with the IIEF-5 score (r = -0.74, P \u3c 0.001). The analysis on the performance of FGF21 for ED diagnosis showed that the area under the receiver operating characteristic (ROC) curve was 0.875 (95% confidence interval [CI]: 0.803 to 0.946). In the animal experiment, the levels of serum FGF21, 2-Δ Δ Ct values of FGF21 mRNA expression, and relative levels of FGF21 in penile samples were higher in the ED group compared to the DM and control groups. Our findings demonstrated an association between the FGF21 level and diabetic ED, indicating the potential of this cytokine in predicting diabetic ED
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