decimation
- North America > United States > California > Santa Clara County > Palo Alto (0.04)
- North America > Canada > Quebec > Montreal (0.04)
- Asia > Middle East > Jordan (0.04)
- North America > United States > California > Santa Clara County > Palo Alto (0.04)
- North America > Canada > Quebec > Montreal (0.04)
- Asia > Middle East > Jordan (0.04)
Gaussian path model library for intuitive robot motion programming by demonstration
Soutukorva, Samuli, Suomalainen, Markku, Kollingbaum, Martin, Heikkilä, Tapio
This paper presents a system for generating Gaussian path models from teaching data representing the path shape. In addition, methods for using these path models to classify human demonstrations of paths are introduced. By generating a library of multiple Gaussian path models of various shapes, human demonstrations can be used for intuitive robot motion programming. A method for modifying existing Gaussian path models by demonstration through geometric analysis is also presented.
- North America > Canada > Ontario > Toronto (0.14)
- Europe > United Kingdom (0.04)
- Europe > Finland > Northern Ostrobothnia > Oulu (0.04)
Decoding Phone Pairs from MEG Signals Across Speech Modalities
de Zuazo, Xabier, Navas, Eva, Saratxaga, Ibon, Bourguignon, Mathieu, Molinaro, Nicola
Understanding the neural mechanisms underlying speech production is essential for both advancing cognitive neuroscience theory and developing practical communication technologies. In this study, we investigated magnetoencephalography signals to decode phones from brain activity during speech production and perception (passive listening and voice playback) tasks. Using a dataset comprising 17 participants, we performed pairwise phone classification, extending our analysis to 15 phonetic pairs. Multiple machine learning approaches, including regularized linear models and neural network architectures, were compared to determine their effectiveness in decoding phonetic information. Our results demonstrate significantly higher decoding accuracy during speech production (76.6%) compared to passive listening and playback modalities (~51%), emphasizing the richer neural information available during overt speech. Among the models, the Elastic Net classifier consistently outperformed more complex neural networks, highlighting the effectiveness of traditional regularization techniques when applied to limited and high-dimensional MEG datasets. Besides, analysis of specific brain frequency bands revealed that low-frequency oscillations, particularly Delta (0.2-3 Hz) and Theta (4-7 Hz), contributed the most substantially to decoding accuracy, suggesting that these bands encode critical speech production-related neural processes. Despite using advanced denoising methods, it remains unclear whether decoding solely reflects neural activity or if residual muscular or movement artifacts also contributed, indicating the need for further methodological refinement. Overall, our findings underline the critical importance of examining overt speech production paradigms, which, despite their complexity, offer opportunities to improve brain-computer interfaces to help individuals with severe speech impairments.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- North America > Canada > Quebec > Montreal (0.04)
- Europe > Spain > Basque Country > Biscay Province > Bilbao (0.04)
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- Health & Medicine > Therapeutic Area > Neurology (1.00)
- Health & Medicine > Health Care Technology (1.00)
Resampling Filter Design for Multirate Neural Audio Effect Processing
Carson, Alistair, Välimäki, Vesa, Wright, Alec, Bilbao, Stefan
Neural networks have become ubiquitous in audio effects modelling, especially for guitar amplifiers and distortion pedals. One limitation of such models is that the sample rate of the training data is implicitly encoded in the model weights and therefore not readily adjustable at inference. Recent work explored modifications to recurrent neural network architecture to approximate a sample rate independent system, enabling audio processing at a rate that differs from the original training rate. This method works well for integer oversampling and can reduce aliasing caused by nonlinear activation functions. For small fractional changes in sample rate, fractional delay filters can be used to approximate sample rate independence, but in some cases this method fails entirely. Here, we explore the use of signal resampling at the input and output of the neural network as an alternative solution. We investigate several resampling filter designs and show that a two-stage design consisting of a half-band IIR filter cascaded with a Kaiser window FIR filter can give similar or better results to the previously proposed model adjustment method with many fewer operations per sample and less than one millisecond of latency at typical audio rates. Furthermore, we investigate interpolation and decimation filters for the task of integer oversampling and show that cascaded half-band IIR and FIR designs can be used in conjunction with the model adjustment method to reduce aliasing in a range of distortion effect models.
- Europe > United Kingdom > England > West Midlands > Birmingham (0.04)
- Europe > United Kingdom > England > Surrey > Guildford (0.04)
- Europe > Greece (0.04)
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Reviews: Screening Sinkhorn Algorithm for Regularized Optimal Transport
This paper proposes a reformulation of the dual of the entropy regularized wassserstein distance problem that is amenable to screening techniques. Such techniques allow to reduce the dimension of optimization problems hence reducing the computational costs. Here static screening rule is proposed, meaning that the variables are screened before running the solver which is here an L-BFGS-B quasi-Newton method. Two screening techniques are proposed, either using a fixed threshold or a fixed budget. The latter appearing easier to use. A theorem quantifying the error on the orignal problem induced by approximation and screening is provided.
Post-1948 order 'at risk of decimation' amid war in Gaza, Ukraine: Amnesty
The world is facing the collapse of the 1948 international order established in the wake of World War II, amid the brutal wars in Gaza and Ukraine, while authoritarian policies continue to spread, Amnesty International has warned. The report accused the world's most powerful governments, including China, Russia and the United States, of leading the global disregard for international rules and values enshrined in the Universal Declaration of Human Rights of December 1948. The war in Gaza, which began on October 7, was a "descent into hell", Secretary-General Agnes Callamard wrote in her preface to the report, where "the'never again' moral and legal lessons [of 1948] were torn into a million pieces". Noting that Hamas had committed "horrific crimes" in its assault on communities in southern Israel on October 7, Callamard said Israel's "campaign of retaliation" had become a "campaign of collective punishment". Amnesty said while Israel continued to disregard international human rights law, the US, its foremost ally, and other countries including the United Kingdom and Germany were guilty of "grotesque double standards" given their willingness to back Israeli and US authorities over Gaza while condemning war crimes by Russia in Ukraine.
- Asia > Middle East > Palestine > Gaza Strip > Gaza Governorate > Gaza (1.00)
- Europe > Ukraine (0.85)
- North America > United States (0.77)
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- Law > International Law (1.00)
- Law > Civil Rights & Constitutional Law (1.00)
- Government > Regional Government > Asia Government (0.37)
Scaling Face Interaction Graph Networks to Real World Scenes
Lopez-Guevara, Tatiana, Rubanova, Yulia, Whitney, William F., Pfaff, Tobias, Stachenfeld, Kimberly, Allen, Kelsey R.
Accurately simulating real world object dynamics is essential for various applications such as robotics, engineering, graphics, and design. To better capture complex real dynamics such as contact and friction, learned simulators based on graph networks have recently shown great promise. However, applying these learned simulators to real scenes comes with two major challenges: first, scaling learned simulators to handle the complexity of real world scenes which can involve hundreds of objects each with complicated 3D shapes, and second, handling inputs from perception rather than 3D state information. Here we introduce a method which substantially reduces the memory required to run graph-based learned simulators. Based on this memory-efficient simulation model, we then present a perceptual interface in the form of editable NeRFs which can convert real-world scenes into a structured representation that can be processed by graph network simulator. We show that our method uses substantially less memory than previous graph-based simulators while retaining their accuracy, and that the simulators learned in synthetic environments can be applied to real world scenes captured from multiple camera angles. This paves the way for expanding the application of learned simulators to settings where only perceptual information is available at inference time.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- Asia > Japan > Honshū > Chūbu > Ishikawa Prefecture > Kanazawa (0.04)
Benchmarking Particle Filter Algorithms for Efficient Velodyne-Based Vehicle Localization
Blanco-Claraco, Jose Luis, Mañas-Alvarez, Francisco, Torres-Moreno, Jose Luis, Rodriguez, Francisco, Gimenez-Fernandez, Antonio
Keeping a vehicle well-localized within a prebuilt-map is at the core of any autonomous vehicle navigation system. In this work, we show that both standard SIR sampling and rejection-based optimal sampling are suitable for efficient (10 to 20 ms) real-time pose tracking without feature detection that is using raw point clouds from a 3D LiDAR. Motivated by the large amount of information captured by these sensors, we perform a systematic statistical analysis of how many points are actually required to reach an optimal ratio between efficiency and positioning accuracy. Furthermore, initialization from adverse conditions, e.g., poor GPS signal in urban canyons, we also identify the optimal particle filter settings required to ensure convergence. Our findings include that a decimation factor between 100 and 200 on incoming point clouds provides a large savings in computational cost with a negligible loss in localization accuracy for a VLP-16 scanner. Furthermore, an initial density of $\sim$2 particles/m$^2$ is required to achieve 100% convergence success for large-scale ($\sim$100,000 m$^2$), outdoor global localization without any additional hint from GPS or magnetic field sensors. All implementations have been released as open-source software.
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.14)
- Europe > Austria > Vienna (0.14)
- Europe > Germany > Baden-Württemberg > Karlsruhe Region > Heidelberg (0.04)
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- Automobiles & Trucks (0.68)
- Transportation (0.47)
The Decimation Scheme for Symmetric Matrix Factorization
Camilli, Francesco, Mézard, Marc
Matrix factorization is an inference problem that has acquired importance due to its vast range of applications that go from dictionary learning to recommendation systems and machine learning with deep networks. The study of its fundamental statistical limits represents a true challenge, and despite a decade-long history of efforts in the community, there is still no closed formula able to describe its optimal performances in the case where the rank of the matrix scales linearly with its size. In the present paper, we study this extensive rank problem, extending the alternative 'decimation' procedure that we recently introduced, and carry out a thorough study of its performance. Decimation aims at recovering one column/line of the factors at a time, by mapping the problem into a sequence of neural network models of associative memory at a tunable temperature. Though being sub-optimal, decimation has the advantage of being theoretically analyzable. We extend its scope and analysis to two families of matrices. For a large class of compactly supported priors, we show that the replica symmetric free entropy of the neural network models takes a universal form in the low temperature limit. For sparse Ising prior, we show that the storage capacity of the neural network models diverges as sparsity in the patterns increases, and we introduce a simple algorithm based on a ground state search that implements decimation and performs matrix factorization, with no need of an informative initialization.
- North America > Canada > Quebec > Montreal (0.04)
- Europe > Italy > Lombardy > Milan (0.04)
- Europe > Italy > Friuli Venezia Giulia > Trieste Province > Trieste (0.04)
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