Abstract: This paper proposes a low-complexity sparse representation algorithm for direction-of-arrival (DOA) estimation of coherent signals under mutual coupling for uniform linear arrays (ULAs). At ...
Add a description, image, and links to the sparse-representation topic page so that developers can more easily learn about it.
Abstract: We investigated the cognitive/neural “recycling” underlying the acquisition of programming, a culturally-invented skill. Using fMRI, we found neural representations of algorithms (written in ...
People store large quantities of data in their electronic devices and transfer some of this data to others, whether for professional or personal reasons. Data compression methods are thus of the ...
ABSTRACT: Node renumbering is an important step in the solution of sparse systems of equations. It aims to reduce the bandwidth and profile of the matrix. This allows for the speeding up of the ...
Neurons in cortical networks are very sparsely connected; even neurons whose axons and dendrites overlap are highly unlikely to form a synaptic connection. What is the relevance of such sparse ...
Reinforcement learning (RL) trains agents to make sequential decisions by maximizing cumulative rewards. It has diverse applications, including robotics, gaming, and automation, where agents interact ...