Search Results for author: Shuang Song

Found 37 papers, 10 papers with code

Multi-view X-ray Image Synthesis with Multiple Domain Disentanglement from CT Scans

no code implementations18 Apr 2024 Lixing Tan, Shuang Song, Kangneng Zhou, Chengbo Duan, Lanying Wang, Huayang Ren, Linlin Liu, Wei zhang, Ruoxiu Xiao

Meanwhile, we also impose a supervised process by computing the similarity of computed real DRR and synthesized DRR images.

Scalable Scene Modeling from Perspective Imaging: Physics-based Appearance and Geometry Inference

no code implementations1 Apr 2024 Shuang Song

3D scene modeling techniques serve as the bedrocks in the geospatial engineering and computer science, which drives many applications ranging from automated driving, terrain mapping, navigation, virtual, augmented, mixed, and extended reality (for gaming and movie industry etc.).

3D Scene Reconstruction

Perceptual learning in contour detection transfer across changes in contour path and orientation

no code implementations18 Mar 2024 Yue Ding, Hongqiao Shi, Shuang Song, Yonghui Wang, Ya Li

The integration of local elements into shape contours is critical for target detection and identification in cluttered scenes.

Contour Detection Specificity

Private Learning with Public Features

no code implementations24 Oct 2023 Walid Krichene, Nicolas Mayoraz, Steffen Rendle, Shuang Song, Abhradeep Thakurta, Li Zhang

We study a class of private learning problems in which the data is a join of private and public features.

Feature Proliferation -- the "Cancer" in StyleGAN and its Treatments

1 code implementation ICCV 2023 Shuang Song, Yuanbang Liang, Jing Wu, Yu-Kun Lai, Yipeng Qin

Thanks to our discovery of Feature Proliferation, the proposed feature rescaling method is less destructive and retains more useful image features than the truncation trick, as it is more fine-grained and works in a lower-level feature space rather than a high-level latent space.

Image Generation

Mesh Conflation of Oblique Photogrammetric Models using Virtual Cameras and Truncated Signed Distance Field

no code implementations23 Aug 2023 Shuang Song, Rongjun Qin

Conflating/stitching 2. 5D raster digital surface models (DSM) into a large one has been a running practice in geoscience applications, however, conflating full-3D mesh models, such as those from oblique photogrammetry, is extremely challenging.

Multi-Task Differential Privacy Under Distribution Skew

no code implementations15 Feb 2023 Walid Krichene, Prateek Jain, Shuang Song, Mukund Sundararajan, Abhradeep Thakurta, Li Zhang

We study the problem of multi-task learning under user-level differential privacy, in which $n$ users contribute data to $m$ tasks, each involving a subset of users.

Multi-Task Learning

Point Cloud Registration for LiDAR and Photogrammetric Data: a Critical Synthesis and Performance Analysis on Classic and Deep Learning Algorithms

1 code implementation14 Feb 2023 Ningli Xu, Rongjun Qin, Shuang Song

In this work, we provide a comprehensive review of the state-of-the-art (SOTA) point cloud registration methods, where we analyze and evaluate these methods using a diverse set of point cloud data from indoor to satellite sources.

Point Cloud Registration

A Novel Intrinsic Image Decomposition Method to Recover Albedo for Aerial Images in Photogrammetry Processing

no code implementations8 Apr 2022 Shuang Song, Rongjun Qin

Recovering surface albedos from photogrammetric images for realistic rendering and synthetic environments can greatly facilitate its downstream applications in VR/AR/MR and digital twins.

Intrinsic Image Decomposition Point Cloud Generation

Debugging Differential Privacy: A Case Study for Privacy Auditing

no code implementations24 Feb 2022 Florian Tramer, Andreas Terzis, Thomas Steinke, Shuang Song, Matthew Jagielski, Nicholas Carlini

Differential Privacy can provide provable privacy guarantees for training data in machine learning.

Toward Training at ImageNet Scale with Differential Privacy

1 code implementation28 Jan 2022 Alexey Kurakin, Shuang Song, Steve Chien, Roxana Geambasu, Andreas Terzis, Abhradeep Thakurta

Despite a rich literature on how to train ML models with differential privacy, it remains extremely challenging to train real-life, large neural networks with both reasonable accuracy and privacy.

Image Classification with Differential Privacy

Membership Inference Attacks From First Principles

2 code implementations7 Dec 2021 Nicholas Carlini, Steve Chien, Milad Nasr, Shuang Song, Andreas Terzis, Florian Tramer

A membership inference attack allows an adversary to query a trained machine learning model to predict whether or not a particular example was contained in the model's training dataset.

Inference Attack Membership Inference Attack

ViF-SD2E: A Robust Weakly-Supervised Method for Neural Decoding

no code implementations2 Dec 2021 Jingyi Feng, Yong Luo, Shuang Song

Neural decoding plays a vital role in the interaction between the brain and the outside world.

Public Data-Assisted Mirror Descent for Private Model Training

no code implementations1 Dec 2021 Ehsan Amid, Arun Ganesh, Rajiv Mathews, Swaroop Ramaswamy, Shuang Song, Thomas Steinke, Vinith M. Suriyakumar, Om Thakkar, Abhradeep Thakurta

In this paper, we revisit the problem of using in-distribution public data to improve the privacy/utility trade-offs for differentially private (DP) model training.

Federated Learning

Vis2Mesh: Efficient Mesh Reconstruction from Unstructured Point Clouds of Large Scenes with Learned Virtual View Visibility

1 code implementation ICCV 2021 Shuang Song, Zhaopeng Cui, Rongjun Qin

Then the visibility information of multiple views is aggregated to generate a 3D mesh model by solving an optimization problem considering visibility in which a novel adaptive visibility weighting in surface determination is also introduced to suppress line of sight with a large incident angle.

Binary Classification Depth Completion +1

A volumetric change detection framework using UAV oblique photogrammetry - A case study of ultra-high-resolution monitoring of progressive building collapse

no code implementations5 Aug 2021 Ningli Xu, Debao Huang, Shuang Song, Xiao Ling, Chris Strasbaugh, Alper Yilmaz, Halil Sezen, Rongjun Qin

In this paper, we present a case study that performs an unmanned aerial vehicle (UAV) based fine-scale 3D change detection and monitoring of progressive collapse performance of a building during a demolition event.

Change Detection Pose Estimation +2

3D Reconstruction through Fusion of Cross-View Images

no code implementations27 Jun 2021 Rongjun Qin, Shuang Song, Xiao Ling, Mostafa Elhashash

3D recovery from multi-stereo and stereo images, as an important application of the image-based perspective geometry, serves many applications in computer vision, remote sensing and Geomatics.

3D Reconstruction Point Cloud Generation

Adversary Instantiation: Lower Bounds for Differentially Private Machine Learning

no code implementations11 Jan 2021 Milad Nasr, Shuang Song, Abhradeep Thakurta, Nicolas Papernot, Nicholas Carlini

DP formalizes this data leakage through a cryptographic game, where an adversary must predict if a model was trained on a dataset D, or a dataset D' that differs in just one example. If observing the training algorithm does not meaningfully increase the adversary's odds of successfully guessing which dataset the model was trained on, then the algorithm is said to be differentially private.

BIG-bench Machine Learning

The Flajolet-Martin Sketch Itself Preserves Differential Privacy: Private Counting with Minimal Space

no code implementations NeurIPS 2020 Adam Smith, Shuang Song, Abhradeep Thakurta

We propose an $(\epsilon,\delta)$-differentially private algorithm that approximates $\dist$ within a factor of $(1\pm\gamma)$, and with additive error of $O(\sqrt{\ln(1/\delta)}/\epsilon)$, using space $O(\ln(\ln(u)/\gamma)/\gamma^2)$.

Tempered Sigmoid Activations for Deep Learning with Differential Privacy

1 code implementation28 Jul 2020 Nicolas Papernot, Abhradeep Thakurta, Shuang Song, Steve Chien, Úlfar Erlingsson

Because learning sometimes involves sensitive data, machine learning algorithms have been extended to offer privacy for training data.

Privacy Preserving Privacy Preserving Deep Learning

Evading Curse of Dimensionality in Unconstrained Private GLMs via Private Gradient Descent

no code implementations11 Jun 2020 Shuang Song, Thomas Steinke, Om Thakkar, Abhradeep Thakurta

We show that for unconstrained convex generalized linear models (GLMs), one can obtain an excess empirical risk of $\tilde O\left(\sqrt{{\texttt{rank}}}/\epsilon n\right)$, where ${\texttt{rank}}$ is the rank of the feature matrix in the GLM problem, $n$ is the number of data samples, and $\epsilon$ is the privacy parameter.

LEMMA

Combining MixMatch and Active Learning for Better Accuracy with Fewer Labels

1 code implementation2 Dec 2019 Shuang Song, David Berthelot, Afshin Rostamizadeh

This analysis can be used to measure the relative value of labeled/unlabeled data at different points of the learning curve, where we find that although the incremental value of labeled data can be as much as 20x that of unlabeled, it quickly diminishes to less than 3x once more than 2, 000 labeled example are observed.

Active Learning

Making the Shoe Fit: Architectures, Initializations, and Tuning for Learning with Privacy

no code implementations25 Sep 2019 Nicolas Papernot, Steve Chien, Shuang Song, Abhradeep Thakurta, Ulfar Erlingsson

Because learning sometimes involves sensitive data, standard machine-learning algorithms have been extended to offer strong privacy guarantees for training data.

Privacy Preserving

That which we call private

no code implementations8 Aug 2019 Úlfar Erlingsson, Ilya Mironov, Ananth Raghunathan, Shuang Song

Instead, the definitions so named are the basis of refinements and more advanced analyses of the worst-case implications of attackers---without any change assumed in attackers' powers.

A Comparison of Stereo-Matching Cost between Convolutional Neural Network and Census for Satellite Images

no code implementations22 May 2019 Bihe Chen, Rongjun Qin, Xu Huang, Shuang Song, Xiaohu Lu

Stereo dense image matching can be categorized to low-level feature based matching and deep feature based matching according to their matching cost metrics.

Stereo Matching Stereo Matching Hand

Renyi Differential Privacy Mechanisms for Posterior Sampling

no code implementations NeurIPS 2017 Joseph Geumlek, Shuang Song, Kamalika Chaudhuri

With the newly proposed privacy definition of Rényi Differential Privacy (RDP) in (Mironov, 2017), we re-examine the inherent privacy of releasing a single sample from a posterior distribution.

regression

Rényi Differential Privacy Mechanisms for Posterior Sampling

no code implementations2 Oct 2017 Joseph Geumlek, Shuang Song, Kamalika Chaudhuri

Using a recently proposed privacy definition of R\'enyi Differential Privacy (RDP), we re-examine the inherent privacy of releasing a single sample from a posterior distribution.

regression

Composition Properties of Inferential Privacy for Time-Series Data

no code implementations10 Jul 2017 Shuang Song, Kamalika Chaudhuri

With the proliferation of mobile devices and the internet of things, developing principled solutions for privacy in time series applications has become increasingly important.

Time Series Time Series Analysis

Pufferfish Privacy Mechanisms for Correlated Data

no code implementations13 Mar 2016 Shuang Song, Yizhen Wang, Kamalika Chaudhuri

Since this mechanism may be computationally inefficient, we provide an additional mechanism that applies to some practical cases such as physical activity measurements across time, and is computationally efficient.

Learning from Data with Heterogeneous Noise using SGD

no code implementations17 Dec 2014 Shuang Song, Kamalika Chaudhuri, Anand D. Sarwate

In this paper, we adopt instead a model in which data is observed through heterogeneous noise, where the noise level reflects the quality of the data source.

The Large Margin Mechanism for Differentially Private Maximization

no code implementations NeurIPS 2014 Kamalika Chaudhuri, Daniel Hsu, Shuang Song

A basic problem in the design of privacy-preserving algorithms is the private maximization problem: the goal is to pick an item from a universe that (approximately) maximizes a data-dependent function, all under the constraint of differential privacy.

BIG-bench Machine Learning Privacy Preserving

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