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Dive into the research topics where Qianli Liao is active.

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Featured researches published by Qianli Liao.


data compression conference | 2017

Compression of Deep Neural Networks for Image Instance Retrieval

Vijay Chandrasekhar; Jie Lin; Qianli Liao; Olivier Morère; Antoine Veillard; Ling-Yu Duan; Tomaso Poggio

Image instance retrieval is the problem of retrieving images from a database which contain the same object. Convolutional Neural Network (CNN) based descriptors are becoming the dominant approach for generating global image descriptors for the instance retrieval problem. One major drawback of CNN-based global descriptors is that uncompressed deep neural network models require hundreds of megabytes of storage making them inconvenient to deploy in mobile applications or in custom hardware. In this work, we study the problem of neural network model compression focusing on the image instance retrieval task. We study quantization, coding, pruning and weight sharing techniques for reducing model size for the instance retrieval problem. We provide extensive experimental results on the trade-off between retrieval performance and model size for different types of networks on several data sets providing the most comprehensive study on this topic. We compress models to the order of a few MBs: two orders of magnitude smaller than the uncompressed models while achieving negligible loss in retrieval performance1.


International Journal of Automation and Computing | 2017

Why and when can deep-but not shallow-networks avoid the curse of dimensionality: A review

Tomaso Poggio; H. N. Mhaskar; Lorenzo Rosasco; Brando Miranda; Qianli Liao


arXiv: Learning | 2016

Learning Functions: When Is Deep Better Than Shallow

H. N. Mhaskar; Qianli Liao; Tomaso Poggio


neural information processing systems | 2013

Learning invariant representations and applications to face verification

Qianli Liao; Joel Z. Leibo; Tomaso Poggio


national conference on artificial intelligence | 2016

How important is weight symmetry in backpropagation

Qianli Liao; Joel Z. Leibo; Tomaso Poggio


international conference on computer vision theory and applications | 2014

Subtasks of Unconstrained Face Recognition

Joel Z. Leibo; Qianli Liao; Tomaso Poggio


arXiv: Computer Vision and Pattern Recognition | 2014

Can a biologically-plausible hierarchy e ectively replace face detection, alignment, and recognition pipelines?

Qianli Liao; Joel Z. Leibo; Youssef Mroueh; Tomaso Poggio


Current Biology | 2017

View-Tolerant Face Recognition and Hebbian Learning Imply Mirror-Symmetric Neural Tuning to Head Orientation

Joel Z. Leibo; Qianli Liao; Fabio Anselmi; Winrich A. Freiwald; Tomaso Poggio


Archive | 2016

Learning Real and Boolean Functions: When Is Deep Better Than Shallow

H. N. Mhaskar; Qianli Liao; Tomaso Poggio


national conference on artificial intelligence | 2017

When and Why Are Deep Networks Better Than Shallow Ones

H. N. Mhaskar; Qianli Liao; Tomaso Poggio

Collaboration


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Tomaso Poggio

Massachusetts Institute of Technology

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Brando Miranda

Massachusetts Institute of Technology

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H. N. Mhaskar

Claremont Graduate University

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Joel Z. Leibo

Massachusetts Institute of Technology

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Lorenzo Rosasco

Massachusetts Institute of Technology

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Alexander Rakhlin

University of Pennsylvania

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Kenji Kawaguchi

Massachusetts Institute of Technology

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Fabio Anselmi

Istituto Italiano di Tecnologia

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