WildDet3D is a promptable 3D detector paired with a new 1M-image dataset across 13.5K categories that sets SOTA on open-world and zero-shot 3D detection benchmarks.
Arbitrary-steps image super-resolution via diffusion inver- sion
4 Pith papers cite this work. Polarity classification is still indexing.
citation-role summary
citation-polarity summary
fields
cs.CV 4representative citing papers
VOSR shows that competitive generative image super-resolution with faithful structures can be achieved by training a diffusion-style model from scratch on visual data alone, using a vision encoder for guidance and a restoration-oriented sampling strategy.
QuantSR+ introduces RBD, QSA, and SFD techniques to achieve state-of-the-art accuracy-efficiency trade-offs in 2-4 bit quantized image super-resolution networks, with reported PSNR gains like 0.29 dB on Urban100 for SwinIR-S.
ZRNet uses a Zernike Graph module modeling azimuthal relationships and a Frequency-Aware Alignment loss to jointly predict aberration coefficients and restore images, reporting state-of-the-art results on CytoImageNet and real PSF data.
citing papers explorer
-
WildDet3D: Scaling Promptable 3D Detection in the Wild
WildDet3D is a promptable 3D detector paired with a new 1M-image dataset across 13.5K categories that sets SOTA on open-world and zero-shot 3D detection benchmarks.
-
VOSR: A Vision-Only Generative Model for Image Super-Resolution
VOSR shows that competitive generative image super-resolution with faithful structures can be achieved by training a diffusion-style model from scratch on visual data alone, using a vision encoder for guidance and a restoration-oriented sampling strategy.
-
QuantSR+: Pushing the Limit of Quantized Image Super-Resolution Networks
QuantSR+ introduces RBD, QSA, and SFD techniques to achieve state-of-the-art accuracy-efficiency trade-offs in 2-4 bit quantized image super-resolution networks, with reported PSNR gains like 0.29 dB on Urban100 for SwinIR-S.
-
Physics-Informed Graph Neural Networks for Frequency-Aware Optical Aberration Correction
ZRNet uses a Zernike Graph module modeling azimuthal relationships and a Frequency-Aware Alignment loss to jointly predict aberration coefficients and restore images, reporting state-of-the-art results on CytoImageNet and real PSF data.