News

MCL Research on Transfer Learning

Transfer learning aims to reduce the size of the labeled training samples by leveraging existing knowledge from one domain, called the source domain, and using the learned 

knowledge to construct models for another domain, called the target domain. In particular, unsupervised domain adaptation (UDA) aims at transferring knowledge from a labeled source domain to an unlabeled target domain.Most existing UDA methods rely on deep learning, primarily pre-trained models, adversarial networks, and transformers. 

We propose an interpretable and lightweight transfer learning (ILTL) method. It consists of two modules. The first module deals with image-level alignment to ensure visually similar images across domains, which performs image processing to minimize structural differences between the source and target images.The second module focuses on feature-level alignment, which identifies the discriminant feature subspace, uses the feature distance to transfer source labels to target samples, and then conducts class-wise alignment in the feature subspace. ILTL can be performed in multiple rounds to enhance the alignment of source and target features. We benchmark ILTL and deep-learning-based methods in classification accuracy, model sizes, and computational complexity in two transfer learning datasets. Experiments show that ILTL can achieve similar accuracy with smaller model sizes and lower computational complexity, while its interpretability provides a deeper understanding of the transfer learning mechanism.

By |February 23rd, 2025|News|Comments Off on MCL Research on Transfer Learning|

MCL Research on EDA

The IR-drop (voltage drop) analysis in integrated circuits is essential as the circuit designs become more complex and compact. Due to the complicated and tiny designs, the power delivery network (PDN) cannot deliver a target voltage to each cell, causing reliability issues and performance drops. Therefore, IR-drop estimation is a crucial step to ensure the functionality of the circuits.

Traditionally, IR-drop estimation relies on solving linear equations based on Kirchhoff’s current and voltage laws. Nevertheless, as the designs become more complex, the computational cost and simulation time increase significantly. In this research, an energy-efficient and high-performance static IR-drop estimation called GIRD (Green IR-Drop) is proposed.  GIRD processes the IC design input in three steps. First, the input netlist data are converted to multi-channel maps. Their joint spatial-spectral representations are determined with PixelHop. Next, discriminant features are selected using the relevant feature test (RFT). Finally, the selected features are fed to the XGBoost (eXtreme Gradient Boosting trees) regressor. Both PixelHop and RFT are green learning tools. GIRD yields a low carbon footprint due to its smaller model sizes and lower computational complexity. Besides, its performance scales well with small training datasets. Experiments on synthetic and real circuits are given to demonstrate the superior performance of GIRD. The model size and the complexity, measured by the Floating Point Operations (FLOPs) of GIRD, are only 1/1000 and 1/100 of deep-learning methods, respectively.

By |February 9th, 2025|News|Comments Off on MCL Research on EDA|

Professor Kuo Gave a Keynote at AIxMM 2025

Professor C.-C. Jay Kuo, Director of MCL, was invited to give a keynote at the AIxMMconference held in Laguna Hills, California, USA, on February 4 (Tuesday). The title ofProfessor Kuo’s keynote is “Mobile/Edge Visual Analytics via Green AI.” The abstract ofis given below.“Mobile/edge visual analytics will prevail in the modern AI era. Most researchers focuson deep-learning-based model compression to achieve this goal. Model compressioncan reduce the model size by 50-80% with slight performance degradation. Modelcompression relies on an existing larger model. The training cost of such a large modelremains. The compression step also demands resources. I have worked on green AIsince 2014, published many papers on this topic, and coined this emerging field “greenlearning.” Green learning demands low power consumption in both training andinference. It has attractive characteristics, such as small model sizes, fewer trainingsamples, mathematical transparency, ease of incremental learning, etc. It can reducethe model size of its deep-learning counterpart by 95-99%. The training can beconducted from scratch. The resulting model is inherently smaller. It is ideal for mobileand edge devices. Green learning relies on signal-processing disciplines such as filterbanks, linear algebra, subspace learning, probability theory, etc. Although it exploitsoptimization, it avoids end-to-end system optimization, a non-convex optimizationproblem. Instead, it adopts modularized optimization, and each optimization problemcan be cast as convex optimization. In this example, I will use several examples todemonstrate the advantages of green learning in visual analytics for mobile/edgedevices.”Professor Kuo received quite a few questions immediately after the talk. He alsoparticipated a panel discussion in the afternoon, 1-2:30 pm.

By |February 2nd, 2025|News|Comments Off on Professor Kuo Gave a Keynote at AIxMM 2025|

Welcome New MCL Member Cynthia Huang

We are so happy to welcome a new MCL member, Cynthia Huang joining MCL this semester. Here is a quick interview with Cynthia:

1. Could you briefly introduce yourself and your research interests?

I am Cynthia Huang, a junior undergraduate student majoring in Computer Engineering and Computer Science at USC. My research interests include machine learning, AutoML, and computer vision. Previously, I have worked on AutoML, specifically on simultaneous optimization of neural network architecture and weights. I hope to continue deepening my exploration of these fields in the future.

2. What is your impression about MCL and USC?

My impression of MCL is that it is a collaborative and inspiring group, where many talented individuals come together with exciting ideas. I truly appreciate the team spirit and supportive environment, where everyone is open to sharing insights and learning from one another. I find great joy in engaging in research discussions, exchanging perspectives, and brainstorming solutions to challenging problems in MCL. I am very excited about the opportunity to collaborate with everyone and look forward to contributing to meaningful research in the future!

3. What are your future expectations and plans in MCL?

Currently, I am working on semantic segmentation using green learning. In the future, I look forward to continuing research discussions and collaborations with everyone at MCL. I hope to further explore new ideas, exchange knowledge, and contribute to exciting research. Additionally, I am excited to connect with more members of the MCL community.

By |January 26th, 2025|News|Comments Off on Welcome New MCL Member Cynthia Huang|

Congratulations to Ganning Zhao for Passing Her Defense!

Congratulations to Ganning Zhao for passing her defense. Ganning’s thesis title is “Learning to Generate Better: Visual Refinement and Evaluation in Generative AI Models.” Her Dissertation Committee included Jay Kuo (Chair), Antonio Ortega, and Stefanos Nikolaidis (Outside Member). The Committee members were pleased with the quality of Ganning’s thesis work. Thanks to our lab members for participating in her rehearsal and providing valuable feedback.Here is the abstract of Ganning’s thesis:

Generative artificial intelligence (GenAI) has advanced rapidly in recent years, finding widespread applications in numerous domains. Generative models (GMs), which produce new data by learning underlying data distributions, typically require vast quantities of training examples—often in the millions or billions. Acquiring and labeling such large datasets is expensive and labor-intensive, prompting researchers to use synthetic data for training. However, the limited quality of these synthetic samples can restrict model performance. Furthermore, accurately evaluating the quality of generated images is critical for guiding improvements in generative models. This dissertation addresses two core challenges: (1) refining synthetic images, and (2) evaluating the quality of generated samples. Each challenge is tackled with a foundational approach and its subsequent enhancement.

By |January 19th, 2025|News|Comments Off on Congratulations to Ganning Zhao for Passing Her Defense!|

Welcome to the Spring 2025 semester!

Welcome to the Spring 2025 semester! 🌸 We hope everyone had a refreshing break and is ready to dive into an exciting new chapter of research, learning, and collaboration.

As always, this semester holds endless possibilities for innovation and discovery. Let’s continue to support each other, exchange ideas, and push the boundaries of knowledge. Remember, every great breakthrough starts with curiosity and hard work!

Wishing you all the best of luck in your projects, papers, and presentations. Let’s make this semester one of great achievements for the MCL Lab and the USC community!

By |January 12th, 2025|News|Comments Off on Welcome to the Spring 2025 semester!|

Happy New Year!

Welcome to 2025, MCL family! Here’s to a year full of happiness, success, and the courage to chase your dreams. May this be a time of growth, discovery, and opportunities that take you to new heights. Let’s make it a year to remember—graceful, bold, and uniquely ours. Cheers to the journey ahead!

Photo credits: https://www.freepik.com/

By |January 5th, 2025|News|Comments Off on Happy New Year!|

Merry Christmas!

As 2024 draws to a close, we reflect on a year of growth, success, and countless blessings at MCL. This year, we bid a fond farewell to our esteemed graduates, whose impactful research leaves an enduring legacy as they step into exciting new chapters. At the same time, we joyfully welcomed fresh faces into our MCL family—brimming with energy and enthusiasm for groundbreaking research.

Through dedication, collaboration, and resilience, our members have achieved remarkable milestones, including publishing exceptional work in prestigious journals and conferences. These accomplishments are a testament to the passion and hard work of every individual in our community.

Now, as the holiday season unfolds with its sparkle of joy and the warmth of togetherness, we take a moment to celebrate the achievements of this past year and the unity that binds us as the MCL family.

From all of us at MCL, we wish you a Merry Christmas filled with cheer, love, and laughter. May this festive season bring you peace, joy, and countless reasons to smile!

By |December 29th, 2024|News|Comments Off on Merry Christmas!|

MCL Research on Green Learning for Medical Imaging

Pathology imaging is a key method in medical diagnostics, offering detailed information on tissue structures and biomarkers. However, traditional approaches to measuring biomarker intensity can be time-consuming, which is why new machine-learning methods are needed to predict these biomarkers directly from images. By identifying and analyzing biomarkers in this way, doctors can better predict patient grades, postoperative responses, and overall disease progression. This approach also presents significant commercial potential.

To address this issue, we adopted the Green U-Shaped Learning (GUSL) pipeline. Specifically, we extracted 15 randomly selected regions of interest (ROIs) from each pathology slide and resized them into patches. Each ROI was then analyzed to determine its biomarker density. GUSL utilizes Green Learning techniques like PixelHop, RFT, and LNT to integrate features from different spatial scales and refine predictions level by level. While this method shows promising results, it requires further adjustments to effectively handle ROIs with larger spatial sizes.

By |December 22nd, 2024|News|Comments Off on MCL Research on Green Learning for Medical Imaging|

Research on Green Image Segmentation

Image segmentation is a computer vision process involving dividing an image into segments based on shared characteristics such as colour, texture, or intensity. Semantic segmentation, specifically, is a type of image segmentation assigning a class label to each pixel in an image. This approach is widely used in autonomous driving, object detection and medical imaging.

To address such problems, we have proposed a green image segmentation approach that identifies each image segment without requiring backpropagation. The image is resized and divided into non-overlapping patches, with each patch labelled as pure or impure based on its class composition. Impure patches are iteratively enlarged and subdivided until all patches are labelled by class. This is a promising method, but it still requires further refinement to deal with incorrectly classified large patches and object boundaries.

By |December 8th, 2024|News|Comments Off on Research on Green Image Segmentation|