Search Results for author: Mateen Ulhaq

Found 10 papers, 4 papers with code

Learned Compression for Images and Point Clouds

1 code implementation12 Sep 2024 Mateen Ulhaq

Over the last decade, deep learning has shown great success at performing computer vision tasks, including classification, super-resolution, and style transfer.

Data Compression Style Transfer +1

Learned Compression of Encoding Distributions

1 code implementation18 Jun 2024 Mateen Ulhaq, Ivan V. Bajić

To address this issue, we propose a method that dynamically adapts the encoding distribution to match the latent data distribution for a specific input.

Decoder

Scalable Human-Machine Point Cloud Compression

1 code implementation19 Feb 2024 Mateen Ulhaq, Ivan V. Bajić

In this paper, we present a scalable codec for point-cloud data that is specialized for the machine task of classification, while also providing a mechanism for human viewing.

Learned Point Cloud Compression for Classification

1 code implementation11 Aug 2023 Mateen Ulhaq, Ivan V. Bajić

Our codec demonstrates the potential of specialized codecs for machine analysis of point clouds, and provides a basis for extension to more complex tasks and datasets in the future.

Classification object-detection +1

Mobile-Cloud Inference for Collaborative Intelligence

no code implementations24 Jun 2023 Mateen Ulhaq

Partial inference is performed on the mobile in order to reduce the dimensionality of the input data and arrive at a compact feature tensor, which is a latent space representation of the input signal.

Learned Disentangled Latent Representations for Scalable Image Coding for Humans and Machines

no code implementations10 Jan 2023 Ezgi Ozyilkan, Mateen Ulhaq, Hyomin Choi, Fabien Racape

As an increasing amount of image and video content will be analyzed by machines, there is demand for a new codec paradigm that is capable of compressing visual input primarily for the purpose of computer vision inference, while secondarily supporting input reconstruction.

object-detection Object Detection

Frequency-aware Learned Image Compression for Quality Scalability

no code implementations3 Jan 2023 Hyomin Choi, Fabien Racape, Shahab Hamidi-Rad, Mateen Ulhaq, Simon Feltman

Spatial frequency analysis and transforms serve a central role in most engineered image and video lossy codecs, but are rarely employed in neural network (NN)-based approaches.

Decoder Image Compression

Joint Image Compression and Denoising via Latent-Space Scalability

no code implementations4 May 2022 Saeed Ranjbar Alvar, Mateen Ulhaq, Hyomin Choi, Ivan V. Bajić

In this paper, we present a learning-based image compression framework where image denoising and compression are performed jointly.

Image Compression Image Denoising +1

Analysis of Latent-Space Motion for Collaborative Intelligence

no code implementations8 Feb 2021 Mateen Ulhaq, Ivan V. Bajić

When the input to a deep neural network (DNN) is a video signal, a sequence of feature tensors is produced at the intermediate layers of the model.

Optical Flow Estimation

Shared Mobile-Cloud Inference for Collaborative Intelligence

no code implementations1 Feb 2020 Mateen Ulhaq, Ivan V. Bajić

Partial inference is performed on the mobile in order to reduce the dimensionality of the input data and arrive at a compact feature tensor, which is a latent space representation of the input signal.

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