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Dive into the research topics where Juan Romeo is active.

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Featured researches published by Juan Romeo.


Expert Systems With Applications | 2012

Automatic detection of crop rows in maize fields with high weeds pressure

Martín Montalvo; Gonzalo Pajares; José Miguel Guerrero; Juan Romeo; María Guijarro; Angela Ribeiro; José J. Ruz; Jesús Manuel de la Cruz

This paper proposes a new method, oriented to crop row detection in images from maize fields with high weed pressure. The vision system is designed to be installed onboard a mobile agricultural vehicle, i.e. submitted to gyros, vibrations and undesired movements. The images are captured under image perspective, being affected by the above undesired effects. The image processing consists of three main processes: image segmentation, double thresholding, based on the Otsus method, and crop row detection. Image segmentation is based on the application of a vegetation index, the double thresholding achieves the separation between weeds and crops and the crop row detection applies least squares linear regression for line adjustment. Crop and weed separation becomes effective and the crop row detection can be favorably compared against the classical approach based on the Hough transform. Both gain effectiveness and accuracy thanks to the double thresholding that makes the main finding of the paper.


Expert Systems With Applications | 2012

Support Vector Machines for crop/weeds identification in maize fields

José Miguel Guerrero; Gonzalo Pajares; Martín Montalvo; Juan Romeo; María Guijarro

In Precision Agriculture (PA) automatic image segmentation for plant identification is an important issue to be addressed. Emerging technologies in optical imaging sensors play an important role in PA. In maize fields, site-specific treatments, with chemical products or mechanical manipulations, are applied for weeds elimination. Maize is an irrigated crop, also unprotected from rainfall. After a strong rain, soil materials (particularly clays) mixed with water impregnate the vegetative cover. The green spectral component associated to the plants is masked by the dominant red spectral component coming from soil materials. This makes methods based on the greenness identification fail under such situations. We propose a new method based on Support Vector Machines for identifying plants with green spectral components masked and unmasked. The method is also valid for post-treatment evaluation, where loss of greenness in weeds is identified with the effectiveness of the treatment and in crops with damage or masking. The performance of the method allows to verify its viability for automatic tasks in agriculture based on image processing.


Expert Systems With Applications | 2013

Automatic expert system for weeds/crops identification in images from maize fields

Martín Montalvo; José Miguel Guerrero; Juan Romeo; Luis Emmi; María Guijarro; Gonzalo Pajares

Automation for the identification of plants, based on imaging sensors, in agricultural crops represents an important challenge. In maize fields, site-specific treatments, with chemical products or mechanical manipulations, can be applied for weeds elimination. This requires the identification of weeds and crop plants. Sometimes these plants appear impregnated by materials coming from the soil (particularly clays). This appears when the field is irrigated or after rain, particularly when the water falls with some force. This makes traditional approaches based on images greenness identification fail under such situations. Indeed, most pixels belonging to plants, but impregnated, are misidentified as soil pixels because they have lost their natural greenness. This loss of greenness also occurs after treatment when weeds have begun the process of death. To correctly identify all plants, independently of the loss of greenness, we design an automatic expert system based on image segmentation procedures. The performance of this method is verified favorably.


Expert Systems With Applications | 2013

Automatic expert system based on images for accuracy crop row detection in maize fields

José Miguel Guerrero; María Guijarro; Martín Montalvo; Juan Romeo; Luis Emmi; Angela Ribeiro; Gonzalo Pajares

This paper proposes an automatic expert system for accuracy crop row detection in maize fields based on images acquired from a vision system. Different applications in maize, particularly those based on site specific treatments, require the identification of the crop rows. The vision system is designed with a defined geometry and installed onboard a mobile agricultural vehicle, i.e. submitted to vibrations, gyros or uncontrolled movements. Crop rows can be estimated by applying geometrical parameters under image perspective projection. Because of the above undesired effects, most often, the estimation results inaccurate as compared to the real crop rows. The proposed expert system exploits the human knowledge which is mapped into two modules based on image processing techniques. The first one is intended for separating green plants (crops and weeds) from the rest (soil, stones and others). The second one is based on the system geometry where the expected crop lines are mapped onto the image and then a correction is applied through the well-tested and robust Theil-Sen estimator in order to adjust them to the real ones. Its performance is favorably compared against the classical Pearson product-moment correlation coefficient.


Expert Systems With Applications | 2013

A new Expert System for greenness identification in agricultural images

Juan Romeo; Gonzalo Pajares; Martín Montalvo; Josep M. Guerrero; María Guijarro; J.M. de la Cruz

Highlights? We design an Expert System for plant discrimination in agricultural fields. ? A decision making module determines the image quality. ? A greenness identification module extracts green plants. ? The Expert System is valid under adverse conditions and different devices. ? Plants segmentation is required for weeds specific treatments. It is well-known that one important issue emerging strongly in agriculture is related with the automation of tasks, where camera-based sensors play an important role. They provide images that must be conveniently processed. The most relevant image processing procedures require the identification of green plants, in our experiments they comes from barley and maize fields including weeds, so that some type of action can be carried out, including site-specific treatments with chemical products or mechanical manipulations.The images come from outdoor environments, which are affected for a high variability of illumination conditions because of sunny or cloudy days or both with high rate of changes.Several indices have been proposed in the literature for greenness identification, but under adverse environmental conditions most of them fail or do not work properly. This is true even for camera devices with auto-image white balance.This paper proposes a new automatic and robust Expert System for greenness identification. It consists of two main modules: (1) decision making, based on image histogram analysis and (2) greenness identification, where two different strategies are proposed, the first based on classical greenness identification methods and the second inspired on the Fuzzy Clustering approach. The Expert System design as a whole makes a contribution, but the Fuzzy Clustering strategy makes the main finding of this paper. The system is tested for different images captured with several camera devices.


Sensors | 2013

Camera Sensor Arrangement for Crop/Weed Detection Accuracy in Agronomic Images

Juan Romeo; José Miguel Guerrero; Martín Montalvo; Luis Emmi; María Guijarro; Pablo González-de-Santos; Gonzalo Pajares

In Precision Agriculture, images coming from camera-based sensors are commonly used for weed identification and crop line detection, either to apply specific treatments or for vehicle guidance purposes. Accuracy of identification and detection is an important issue to be addressed in image processing. There are two main types of parameters affecting the accuracy of the images, namely: (a) extrinsic, related to the sensors positioning in the tractor; (b) intrinsic, related to the sensor specifications, such as CCD resolution, focal length or iris aperture, among others. Moreover, in agricultural applications, the uncontrolled illumination, existing in outdoor environments, is also an important factor affecting the image accuracy. This paper is exclusively focused on two main issues, always with the goal to achieve the highest image accuracy in Precision Agriculture applications, making the following two main contributions: (a) camera sensor arrangement, to adjust extrinsic parameters and (b) design of strategies for controlling the adverse illumination effects.


The Scientific World Journal | 2012

Crop Row Detection in Maize Fields Inspired on the Human Visual Perception

Juan Romeo; Gonzalo Pajares; Martín Montalvo; Josep M. Guerrero; María Guijarro; Angela Ribeiro

This paper proposes a new method, oriented to image real-time processing, for identifying crop rows in maize fields in the images. The vision system is designed to be installed onboard a mobile agricultural vehicle, that is, submitted to gyros, vibrations, and undesired movements. The images are captured under image perspective, being affected by the above undesired effects. The image processing consists of two main processes: image segmentation and crop row detection. The first one applies a threshold to separate green plants or pixels (crops and weeds) from the rest (soil, stones, and others). It is based on a fuzzy clustering process, which allows obtaining the threshold to be applied during the normal operation process. The crop row detection applies a method based on image perspective projection that searches for maximum accumulation of segmented green pixels along straight alignments. They determine the expected crop lines in the images. The method is robust enough to work under the above-mentioned undesired effects. It is favorably compared against the well-tested Hough transformation for line detection.


Journal of Imaging | 2016

Machine-Vision Systems Selection for Agricultural Vehicles: A Guide

Gonzalo Pajares; Iván García-Santillán; Yerania Campos; Martín Montalvo; José Miguel Guerrero; Luis Emmi; Juan Romeo; María Guijarro; Pablo González-de-Santos

Machine vision systems are becoming increasingly common onboard agricultural vehicles (autonomous and non-autonomous) for different tasks. This paper provides guidelines for selecting machine-vision systems for optimum performance, considering the adverse conditions on these outdoor environments with high variability on the illumination, irregular terrain conditions or different plant growth states, among others. In this regard, three main topics have been conveniently addressed for the best selection: (a) spectral bands (visible and infrared); (b) imaging sensors and optical systems (including intrinsic parameters) and (c) geometric visual system arrangement (considering extrinsic parameters and stereovision systems). A general overview, with detailed description and technical support, is provided for each topic with illustrative examples focused on specific applications in agriculture, although they could be applied in different contexts other than agricultural. A case study is provided as a result of research in the RHEA (Robot Fleets for Highly Effective Agriculture and Forestry Management) project for effective weed control in maize fields (wide-rows crops), funded by the European Union, where the machine vision system onboard the autonomous vehicles was the most important part of the full perception system, where machine vision was the most relevant. Details and results about crop row detection, weed patches identification, autonomous vehicle guidance and obstacle detection are provided together with a review of methods and approaches on these topics.


advanced concepts for intelligent vision systems | 2013

Acquisition of Agronomic Images with Sufficient Quality by Automatic Exposure Time Control and Histogram Matching

Martín Montalvo; José Miguel Guerrero; Juan Romeo; María Guijarro; Jesús Manuel de la Cruz; Gonzalo Pajares

Agronomic images in Precision Agriculture are most times used for crop lines detection and weeds identification; both are a key issue because specific treatments or guidance require high accuracy. Agricultural images are captured in outdoor scenarios, always under uncontrolled illumination. CCD-based cameras, acquiring these images, need a specific control to acquire images of sufficient quality for greenness identification from which the crop lines and weeds are to be extracted. This paper proposes a procedure to achieve images with sufficient quality by controlling the exposure time based on image histogram analysis, completed with histogram matching. The performance of the proposed procedure is verified against testing images.


Second International Conference on Robotics and associated High-technologies and Equipment for Agriculture and forestry (RHEA-2014)- New trends in mobile robotics, perception and actuation for agriculture and forestry, May 21-23, 2014, Madrid, Spain | 2014

Calibration and synchronization between WDS and flaming system within the RHEA project

Christian Frasconi; Juan Romeo; Luisa Martelloni; Marco Fontanelli; Michele Raffaelli; Gonzalo Pajares; Michel Pirchio; Andrea Peruzzi

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Gonzalo Pajares

Complutense University of Madrid

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Martín Montalvo

Complutense University of Madrid

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María Guijarro

Complutense University of Madrid

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José Miguel Guerrero

Complutense University of Madrid

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Luis Emmi

Spanish National Research Council

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Angela Ribeiro

Spanish National Research Council

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Diego Oliva

University of Guadalajara

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Jesús Manuel de la Cruz

Complutense University of Madrid

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Pablo González-de-Santos

Spanish National Research Council

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