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Dive into the research topics where Lucas C. Uzal is active.

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Featured researches published by Lucas C. Uzal.


Computers and Electronics in Agriculture | 2016

Deep learning for plant identification using vein morphological patterns

Guillermo L. Grinblat; Lucas C. Uzal; Mónica G. Larese; Pablo M. Granitto

Display Omitted Deep convolutional neural network (CNN) for plant identification focusing on leaf vein patterns.No task-specific feature extractors needed.Improved the state of the art accuracy on a legume species recognition task.Visualization of relevant vein patterns. We propose using a deep convolutional neural network (CNN) for the problem of plant identification from leaf vein patterns. In particular, we consider classifying three different legume species: white bean, red bean and soybean. The introduction of a CNN avoids the use of handcrafted feature extractors as it is standard in state of the art pipeline. Furthermore, this deep learning approach significantly improves the accuracy of the referred pipeline. We also show that the reported accuracy is reached by increasing the model depth. Finally, by analyzing the resulting models with a simple visualization technique, we are able to unveil relevant vein patterns.


conference on data and application security and privacy | 2016

Toward Large-Scale Vulnerability Discovery using Machine Learning

Gustavo Grieco; Guillermo L. Grinblat; Lucas C. Uzal; Sanjay Rawat; Josselin Feist; Laurent Mounier

With sustained growth of software complexity, finding security vulnerabilities in operating systems has become an important necessity. Nowadays, OS are shipped with thousands of binary executables. Unfortunately, methodologies and tools for an OS scale program testing within a limited time budget are still missing. In this paper we present an approach that uses lightweight static and dynamic features to predict if a test case is likely to contain a software vulnerability using machine learning techniques. To show the effectiveness of our approach, we set up a large experiment to detect easily exploitable memory corruptions using 1039 Debian programs obtained from its bug tracker, collected 138,308 unique execution traces and statically explored 76,083 different subsequences of function calls. We managed to predict with reasonable accuracy which programs contained dangerous memory corruptions. We also developed and implemented VDiscover, a tool that uses state-of-the-art Machine Learning techniques to predict vulnerabilities in test cases. Such tool will be released as open-source to encourage the research of vulnerability discovery at a large scale, together with VDiscovery, a public dataset that collects raw analyzed data.


Expert Systems With Applications | 2013

Abrupt change detection with One-Class Time-Adaptive Support Vector Machines

Guillermo L. Grinblat; Lucas C. Uzal; Pablo M. Granitto

Abstract We recently introduced an algorithm for training a sequence of coupled Support Vector Machines which shows promising results in the field of non-stationary classification problems Grinblat, Uzal, Ceccatto, and Granitto (2011) . In this paper we analyze its application to the abrupt change detection problem. With this goal, we first introduce and analyze an extension of it to deal with the One-Class Support Vector Machine (OC-SVM) problem, and then discuss its use as an improved abrupt change detection method. Finally, we apply the proposed procedure to artificial and real-world examples, and demonstrate that it is competitive by comparison against other abrupt change detection methods.


international conference hybrid intelligent systems | 2008

REPMAC: A New Hybrid Approach to Highly Imbalanced Classification Problems

Hernán C. Ahumada; Guillermo L. Grinblat; Lucas C. Uzal; Pablo M. Granitto; H. Alejandro Ceccatto

The class imbalance problem (when one of the classes has much less samples than the others) is of great importance in machine learning, because it corresponds to many critical applications. In this work we introduce the recursive partitioning of the majority class (REPMAC) algorithm, a new hybrid method to solve imbalanced problems. Using a clustering method, REPMAC recursively splits the majority class in several subsets, creating a decision tree, until the resulting sub-problems are balanced or easy to solve. At that point, a classifier is fitted to each sub-problem. We evaluate the new method on 7 datasets from the UCI repository, finding that REPMAC is more efficient than other methods usually applied to imbalanced datasets.


Neural Computing and Applications | 2015

Nonstationary regression with support vector machines

Guillermo L. Grinblat; Lucas C. Uzal; Pablo Fabián Verdes; Pablo M. Granitto

Abstract In this work, we introduce a method for data analysis in nonstationary environments: time-adaptive support vector regression (TA-SVR). The proposed approach extends a previous development that was limited to classification problems. Focusing our study on time series applications, we show that TA-SVR can improve the accuracy of several aspects of nonstationary data analysis, namely the tasks of modelling and prediction, input relevance estimation, and reconstruction of a hidden forcing profile.


Computers and Electronics in Agriculture | 2018

Seed-per-pod estimation for plant breeding using deep learning

Lucas C. Uzal; Guillermo L. Grinblat; R. Namías; Mónica G. Larese; J.S. Bianchi; E.N. Morandi; Pablo M. Granitto

Abstract Commercial and scientific plant breeding programs require the phenotyping of large populations. Phenotyping is typically a manual task (costly, time-consuming and sometimes arbitrary). The use of computer vision techniques is a potential solution to some of these specific tasks. In the last years, Deep Learning, and in particular Convolutional Neural Networks (CNNs), have shown a number of advantages over traditional methods in the area. In this work we introduce a computer vision method that estimates the number of seeds into soybean pods, a difficult task that usually requires the intervention of human experts. To this end we developed a classic approach, based on tailored features extraction (FE) followed by a Support Vector Machines (SVM) classification model, and also the referred CNNs. We show how standard CNNs can be easily configured and how a simple method can be used to visualize the key features learned by the model in order to infer the correct class. We processed different seasons batches with both methods obtaining 50.4% (FE + SVM) and 86.2% (CNN) of accuracy in test, highlighting the particularly high increase in generalization capabilities of a deep learning approach over a classic machine vision approach in this task. Dataset and code are publicly available.


hybrid intelligent systems | 2011

Evaluation of a new hybrid algorithm for highly imbalanced classification problems

Hernán C. Ahumada; Guillermo L. Grinblat; Lucas C. Uzal; H. Alejandro Ceccatto; Pablo M. Granitto

Many times in classification problems, particularly in critical real world applications, one of the classes has much less samples than the others usually known as the class imbalance problem. In this work we discuss and evaluate the use of the REPMAC algorithm to solve imbalanced problems. Using a clustering method, REPMAC recursively splits the majority class in several subsets, creating a decision tree, until the resulting sub-problems are balanced or easy to solve. We use two diverse clustering methods and three different classifiers coupled with REPMAC to evaluate the new method on several benchmark datasets spanning a wide range of number of features, samples and imbalance degree. We also apply our method to a real world problem, the identification of weed seeds. We find that the good performance of REPMAC is almost independent of the classifier or the clustering method coupled to it, which suggests that its success is mostly related to the use of an appropriate strategy to cope with imbalanced problems.


arXiv: Machine Learning | 2017

Class-Splitting Generative Adversarial Networks.

Guillermo L. Grinblat; Lucas C. Uzal; Pablo M. Granitto


Inteligencia Artificial,revista Iberoamericana De Inteligencia Artificial | 2018

Semantic analisis on faces using deep neural networks

Nicolás Federico Pellejero; Guillermo L. Grinblat; Lucas C. Uzal


Archive | 2014

Predicci on de Sistemas Din amicos con Redes Neuronales Profundas

Daniel G. Maino; Lucas C. Uzal; Pablo M. Granitto

Collaboration


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Guillermo L. Grinblat

National University of Rosario

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Pablo M. Granitto

National Scientific and Technical Research Council

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Hernán C. Ahumada

National Scientific and Technical Research Council

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H. Alejandro Ceccatto

National Scientific and Technical Research Council

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Mónica G. Larese

National Scientific and Technical Research Council

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E.N. Morandi

National Scientific and Technical Research Council

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Gustavo Grieco

National Scientific and Technical Research Council

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J.S. Bianchi

National Scientific and Technical Research Council

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Pablo Fabián Verdes

National Scientific and Technical Research Council

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R. Namías

National Scientific and Technical Research Council

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