Search Results for author: Muhammet Balcilar

Found 10 papers, 4 papers with code

Latent-Shift: Gradient of Entropy Helps Neural Codecs

no code implementations1 Aug 2023 Muhammet Balcilar, Bharath Bhushan Damodaran, Karam Naser, Franck Galpin, Pierre Hellier

End-to-end image/video codecs are getting competitive compared to traditional compression techniques that have been developed through decades of manual engineering efforts.

Entropy Coding Improvement for Low-complexity Compressive Auto-encoders

no code implementations10 Mar 2023 Franck Galpin, Muhammet Balcilar, Frédéric Lefebvre, Fabien Racapé, Pierre Hellier

End-to-end image and video compression using auto-encoders (AE) offers new appealing perspectives in terms of rate-distortion gains and applications.

Quantization Video Compression

RQAT-INR: Improved Implicit Neural Image Compression

no code implementations6 Mar 2023 Bharath Bhushan Damodaran, Muhammet Balcilar, Franck Galpin, Pierre Hellier

Deep variational autoencoders for image and video compression have gained significant attraction in the recent years, due to their potential to offer competitive or better compression rates compared to the decades long traditional codecs such as AVC, HEVC or VVC.

Image Compression Video Compression

Improving The Reconstruction Quality by Overfitted Decoder Bias in Neural Image Compression

no code implementations10 Oct 2022 Oussama Jourairi, Muhammet Balcilar, Anne Lambert, François Schnitzler

End-to-end trainable models have reached the performance of traditional handcrafted compression techniques on videos and images.

Image Compression

Reducing The Amortization Gap of Entropy Bottleneck In End-to-End Image Compression

no code implementations2 Sep 2022 Muhammet Balcilar, Bharath Damodaran, Pierre Hellier

The decoder is also learned as a deep trainable network, and the reconstructed image measures the distortion.

Image Compression

Breaking the Limits of Message Passing Graph Neural Networks

2 code implementations8 Jun 2021 Muhammet Balcilar, Pierre Héroux, Benoit Gaüzère, Pascal Vasseur, Sébastien Adam, Paul Honeine

Since the Message Passing (Graph) Neural Networks (MPNNs) have a linear complexity with respect to the number of nodes when applied to sparse graphs, they have been widely implemented and still raise a lot of interest even though their theoretical expressive power is limited to the first order Weisfeiler-Lehman test (1-WL).

Analyzing the Expressive Power of Graph Neural Networks in a Spectral Perspective

1 code implementation ICLR 2021 Muhammet Balcilar, Guillaume Renton, Pierre Héroux, Benoit Gaüzère, Sébastien Adam, Paul Honeine

Since the graph isomorphism problem is NP-intermediate, and Weisfeiler-Lehman (WL) test can give sufficient but not enough evidence in polynomial time, the theoretical power of GNNs is usually evaluated by the equivalence of WL-test order, followed by an empirical analysis of the models on some reference inductive and transductive datasets.

Bridging the Gap Between Spectral and Spatial Domains in Graph Neural Networks

2 code implementations26 Mar 2020 Muhammet Balcilar, Guillaume Renton, Pierre Heroux, Benoit Gauzere, Sebastien Adam, Paul Honeine

Moreover, the proposed framework is used to design new convolutions in spectral domain with a custom frequency profile while applying them in the spatial domain.

Graph Classification Graph Learning +1

Audio Captcha Recognition Using RastaPLP Features by SVM

2 code implementations8 Jan 2019 Ahmet Faruk Cakmak, Muhammet Balcilar

Briefly, audio CAPTCHAs are sound files which consist of human sound under heavy noise where the speaker pronounces a bunch of digits consecutively.

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