Pattern Recognition
13th Mexican Conference, MCPR 2021, Mexico City, Mexico, June 23–26, 2021, Proceedings
Chapter and Conference Paper
Atmospheric pollution components have negative effects in the health and life of people. Outdoor pollution has been extensively studied, but a large portion of people stay indoors. Our research focuses on indo...
Book and Conference Proceedings
13th Mexican Conference, MCPR 2021, Mexico City, Mexico, June 23–26, 2021, Proceedings
Chapter and Conference Paper
Determining the style or artistic movement to which a painter corresponds is a challenging and complicated problem because there are many factors that influence a painting, and these factors are of a qualitati...
Chapter and Conference Paper
This work proposes the use of deep learning architectures, and in particular Convolutional Autencoders (CAE’s), to incorporate an explicit component of orthogonality to the computation of local image descript...
Chapter and Conference Paper
In recent years, sentence modeling using dense vector representations has been a central concern in Natural Language Processing research. While many efforts are essentially focused on the quality of the embedd...
Chapter and Conference Paper
This work extends the use of the non-parametric dimensionality reduction method t-SNE [11] to unseen data. Specifically, we use retrieval experiments to assess quantitatively the performance of several existing m...
Chapter and Conference Paper
We introduce a method for estimation of rotation invariant local shape descriptors for 3D models. This method follows a successful idea commonly used to obtain rotation invariant descriptors in 2D images, and ...
Chapter and Conference Paper
We analyze the performance of deep neural architectures for extracting shape representations of binary images, and for generating low-dimensional representations of them. In particular, we focus on indexing bi...
Chapter and Conference Paper
Providing a fast and accurate (exact or approximate) access to large-scale multidimensional data is a ubiquitous problem and dates back to the early days of large-scale Information Systems. Similarity search, ...
Chapter and Conference Paper
This work presents a new methodology for efficient scanning and analysis of 3D shapes representing archaeological potsherds, which is based on single-view 3D scanning. More precisely, this work presents an ana...
Chapter and Conference Paper
We introduce the Tepalcatl project, an ongoing bi-disciplinary effort conducted by archaeologists and computer vision researchers, which focuses on develo** statistical methods for the automatic categorizati...
Chapter and Conference Paper
This work introduces a new formulation of the Histogram-of-Orientations Shape-Context (HOOSC) descriptor [9], which has shorter dimensionality and higher degree of scale and rotation invariance with respect to...
Chapter and Conference Paper
In this work we address the problem of detecting instances of complex shapes in binary images. We investigated the effects of combining DoG and Harris-Laplace interest points with SIFT and HOOSC descriptors. A...
Chapter and Conference Paper
We present a method for automatic detection of stopwords in visual vocabularies that is based upon the entropy of each visual word. We propose a specific formulation to compute the entropy as the core of this ...
Chapter and Conference Paper
We present an overview of the CODICES project, an interdisciplinary approach for analysis of pre-Columbian collections of pictorial materials – more specifically, of Maya hieroglyphics. We discuss some of the ...
Article
This paper presents an original approach for shape-based analysis of ancient Maya hieroglyphs based on an interdisciplinary collaboration between computer vision and archeology. Our work is guided by realistic...