Euclidean distance matrices (EDMs) are matrices of the squared distances between points. The definition is deceivingly simple; thanks to their many useful properties, they have found applications in psychometrics, crystallography, machine learning, wireless sensor networks, acoustics, and more. Despite the usefulness of EDMs, they seem to be insufficiently known in the signal processing community. Our goal is to rectify this mishap in a concise tutorial. We review the fundamental properties of EDMs, such as rank or (non)definiteness, and show how the various EDM properties can be used to design algorithms for completing and denoising distance data. Along the way, we demonstrate applications to microphone position calibration, ultrasound tom...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
International audienceThis paper presents the theoretical properties of an algorithm to find a reali...
We propose to use non-negative matrix factorization (NMF) to estimate the unknown pairwise distances...
Euclidean distance matrices (EDM) are matrices of squared distances between points. The definition i...
Recent methods for microphone position calibration work with sound sources at a priori unknown locat...
Recent methods for localization of microphones in a microphone array exploit sound sources at a prio...
In many problems such as phase retrieval, molecular biology, source localization, and sensor array c...
Euclidean distance embedding appears in many high-profile applications including wireless sensor net...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
A distance matrix D of order n is symmetric with elements , where dii=0. D is Euclidean when the qu...
This thesis is an accumulation of work regarding a class of constrained Euclidean Distance Matrix (E...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
International audienceThis paper presents the theoretical properties of an algorithm to find a reali...
We propose to use non-negative matrix factorization (NMF) to estimate the unknown pairwise distances...
Euclidean distance matrices (EDM) are matrices of squared distances between points. The definition i...
Recent methods for microphone position calibration work with sound sources at a priori unknown locat...
Recent methods for localization of microphones in a microphone array exploit sound sources at a prio...
In many problems such as phase retrieval, molecular biology, source localization, and sensor array c...
Euclidean distance embedding appears in many high-profile applications including wireless sensor net...
The fundamental problem of distance geometry involves the characterization and study of sets of poin...
A distance matrix D of order n is symmetric with elements , where dii=0. D is Euclidean when the qu...
This thesis is an accumulation of work regarding a class of constrained Euclidean Distance Matrix (E...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
The fundamental problem of distance geometry involves the characterization and study of sets of poi...
International audienceThis paper presents the theoretical properties of an algorithm to find a reali...
We propose to use non-negative matrix factorization (NMF) to estimate the unknown pairwise distances...