49 research outputs found

    Detection, identification, and quantification of fungal diseases of sugar beet leaves using imaging and non-imaging hyperspectral techniques

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    Plant diseases influence the optical properties of plants in different ways. Depending on the host pathogen system and disease specific symptoms, different regions of the reflectance spectrum are affected, resulting in specific spectral signatures of diseased plants. The aim of this study was to examine the potential of hyperspectral imaging and non-imaging sensor systems for the detection, differentiation, and quantification of plant diseases. Reflectance spectra of sugar beet leaves infected with the fungal pathogens Cercospora beticola, Erysiphe betae, and Uromyces betae causing Cercospora leaf spot, powdery mildew, and sugar beet rust, respectively, were recorded repeatedly during pathogenesis. Hyperspectral data were analyzed using various methods of data and image analysis and were compared to ground truth data. Several approaches with different sensors on the measuring scales leaf, canopy, and field have been tested and compared. Much attention was paid on the effect of spectral, spatial, and temporal resolution of hyperspectral sensors on disease recording. Another focus of this study was the description of spectral characteristics of disease specific symptoms. Therefore, different data analysis methods have been applied to gain a maximum of information from spectral signatures. Spectral reflectance of sugar beet was affected by each disease in a characteristic way, resulting in disease specific signatures. Reflectance differences, sensitivity, and best correlating spectral bands differed depending on the disease and the developmental stage of the diseases. Compared to non-imaging sensors, the hyperspectral imaging sensor gave extra information related to spatial resolution. The preciseness in detecting pixel-wise spatial and temporal differences was on a high level. Besides characterization of diseased leaves also the assessment of pure disease endmembers as well as of different regions of typical symptoms was realized. Spectral vegetation indices (SVIs) related to physiological parameters were calculated and correlated to the severity of diseases. The SVIs differed in their sensitivity to the different diseases. Combining the information from multiple SVIs in an automatic classification method with Support Vector Machines, high sensitivity and specificity for the detection and differentiation of diseased leaves was reached in an early stage. In addition to the detection and identification, the quantification of diseases was possible with high accuracy by SVIs and Spectral Angle Mapper classification, calculated from hyperspectral images. Knowledge from measurements under controlled condition was carried over to the field scale. Early detection and monitoring of Cercospora leaf spot and powdery mildew was facilitated. The results of this study contribute to a better understanding of plant optical properties during disease development. Methods will further be applicable in precision crop protection, to realize the detection, differentiation, and quantification of plant diseases in early stages.Nachweis, Identifizierung und Quantifizierung pilzlicher Blattkrankheiten der ZuckerrĂŒbe mit abbildenden und nicht-abbildenden hyperspektralen Sensoren Pflanzenkrankheiten wirken sich auf die optischen Eigenschaften von Pflanzen in unterschiedlicher Weise aus. Verschiedene Bereiche des Reflektionsspektrums werden in AbhĂ€ngigkeit von Wirt-Pathogen System und krankheitsspezifischen Symptomen beeinflusst. Hyperspektrale, nicht-invasive Sensoren bieten die Möglichkeit, optische VerĂ€nderungen zu einem frĂŒhen Zeitpunkt der Krankheitsentwicklung zu detektieren. Ziel dieser Arbeit war es, das Potential hyperspektraler abbildender und nicht abbildender Sensoren fĂŒr die Erkennung, Identifizierung und Quantifizierung von Pflanzenkrankheiten zu beurteilen. ZuckerrĂŒbenblĂ€tter wurden mit den pilzlichen Erregern Cercospora beticola, Erysiphe betae bzw. Uromyces betae inokuliert und die Auswirkungen der Entwicklung von Cercospora Blattflecken, Echtem Mehltau bzw. RĂŒbenrost auf die Reflektionseigenschaften erfasst und mit optischen Bonituren verglichen. Auf den Skalenebenen Blatt, Bestand und Feld wurden MessansĂ€tze mit unterschiedlichen Sensoren verglichen. Besonders berĂŒcksichtigt wurden hierbei Anforderungen an die spektrale, rĂ€umliche und zeitliche Auflösung der Sensoren. Ein weiterer Schwerpunkt lag auf der Beschreibung der spektralen Eigenschaften von charakteristischen Symptomen. Verschiedene Auswerteverfahren wurden mit dem Ziel angewendet, einen maximalen Informationsgehalt aus spektralen Signaturen zu gewinnen. Jede Krankheit beeinflusste die spektrale Reflektion von ZuckerrĂŒbenblĂ€ttern auf charakteristische Weise. Differenz der Reflektion, SensitivitĂ€t sowie Korrelation der spektralen BĂ€nder zur BefallsstĂ€rke variierten in AbhĂ€ngigkeit von den Krankheiten. Eine höhere PrĂ€zision durch die pixelweise Erfassung rĂ€umlicher und zeitlicher Unterschiede von befallenem und gesundem Gewebe konnte durch abbildende Sensoren erreicht werden. Spektrale Vegetationsindizes (SVIs), mit Bezug zu pflanzenphysiologischen Parametern wurden aus den Hyperspektraldaten errechnet und mit der BefallsstĂ€rke korreliert. Die SVIs unterschieden sich in ihrer SensitivitĂ€t gegenĂŒber den drei Krankheiten. Durch den Einsatz von maschinellem Lernen wurde die kombinierte Information der errechneten Vegetationsindizes fĂŒr eine automatische Klassifizierung genutzt. Eine hohe SensitivitĂ€t sowie eine hohe SpezifitĂ€t bezĂŒglich der Erkennung und Differenzierung von Krankheiten wurden erreicht. Eine Quantifizierung der Krankheiten war neben der Detektion und Identifizierung mittels SVIs bzw. Klassifizierung mit Spektral Angle Mapper an hyperspektralen Bilddaten möglich. Die Ergebnisse dieser Arbeit tragen zu einem besseren VerstĂ€ndnis der optischen Eigenschaften von Pflanzen unter Pathogeneinfluss bei. Die untersuchten Methoden bieten die Möglichkeit in Anwendungen des PrĂ€zisionspflanzenschutzes implementiert zu werden, um eine frĂŒhzeitige Erkennung, Differenzierung und Quantifizierung von Pflanzenkrankheiten zu ermöglichen

    Infrared Thermography as a Non-Invasive Tool to Explore Differences in the Musculoskeletal System of Children with Hemophilia Compared to an Age-Matched Healthy Group

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    Recurrent joint bleeds and silent bleeds are the most common clinical feature in patients with hemophilia. Every bleed causes an immediate inflammatory response and is the leading cause of chronic crippling arthropathy. With the help of infrared thermography we wanted to detect early differences between a group of clinical non-symptomatic children with hemophilia (CWH) with no history of clinically detected joint bleeds and a healthy age-matched group of children. This could help to discover early inflammation and help implement early treatment and preventative strategies. It could be demonstrated that infrared thermography is sensitive enough to detect more signs of early inflammatory response in the CWH than in healthy children. It seems to detect more side differences in temperature than clinical examination of silent symptoms detects tender points. Silent symptoms/tender points seem to be combined with early local inflammation. Using such a non-invasive and sensor-based early detection, prevention of overloading and bleeding might be achieved

    Hyperspectral imaging for small-scale analysis of symptoms caused by different sugar beet diseases

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    Hyperspectral imaging (HSI) offers high potential as a non-invasive diagnostic tool for disease detection. In this paper leaf characteristics and spectral reflectance of sugar beet leaves diseased with Cercospora leaf spot, powdery mildew and leaf rust at different development stages were connected. Light microscopy was used to describe the morphological changes in the host tissue due to pathogen colonisation. Under controlled conditions a hyperspectral imaging line scanning spectrometer (ImSpector V10E) with a spectral resolution of 2.8 nm from 400 to 1000 nm and a spatial resolution of 0.19 mm was used for continuous screening and monitoring of disease symptoms during pathogenesis. A pixel-wise mapping of spectral reflectance in the visible and near-infrared range enabled the detection and detailed description of diseased tissue on the leaf level. Leaf structure was linked to leaf spectral reflectance patterns. Depending on the interaction with the host tissue, the pathogens caused disease-specific spectral signatures. The influence of the pathogens on leaf reflectance was a function of the developmental stage of the disease and of the subarea of the symptoms. Spectral reflectance in combination with Spectral Angle Mapper classification allowed for the differentiation of mature symptoms into zones displaying all ontogenetic stages from young to mature symptoms. Due to a pixel-wise extraction of pure spectral signatures a better understanding of changes in leaf reflectance caused by plant diseases was achieved using HSI. This technology considerably improves the sensitivity and specificity of hyperspectrometry in proximal sensing of plant diseases

    Screening of sugar beet pre-breeding populations and breeding lines for resistance to Ditylenchus dipsaci penetration and reproduction

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    Ditylenchus dipsaci is an economically important plant-parasitic nematode affecting European sugar beets. To date, no sugar beet cultivars carrying resistance against D. dipsaci are available to farmers. To find potentially resistant sugar beet lines restricting reproduction and penetration of D. dipsaci, three consecutive in vivo bioassays were carried out. The first experiment determined the penetration rate of D. dipsaci in 79 breeding lines and 14 pre-breeding populations. Based on these results, D. dipsaci penetration and reproduction resistance of eight genotypes was intensively investigated. It could be demonstrated that none of the genotypes showed resistance towards D. dipsaci. However, a high variation of the penetration rate by D. dipsaci was observed among the genotypes. The breeding line ‘DIT_119’ effectively reduced D. dipsaci penetration (34.4 ± 8.8 nematodes/plant at 22 days post-planting) compared to the susceptible control (109.0 ± 16.9) while ensuring a yield comparable to non-inoculated plants. However, the breeding line ‘DIT_119’ did not reduce D. dipsaci reproduction. The paternal line of the cultivar BERETTA KWS, demonstrating a high tolerance to D. dipsaci crown rot symptoms, did not reduce penetration and reproduction. Thus, no correlation can be established between reduced penetration rates, reproduction, and tolerance to D. dipsaci. This study provides an essential basis for the development of resistant sugar beet cultivars to D. dipsaci. The variations observed among genotypes now need to be confirmed with larger-scale screenings

    Special Issue "Remote Sensing and Proximal Sensing in Support of Agricultural Cultivation and Crop Risk Management"

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    Screening of Barley Resistance Against Powdery Mildew by Simultaneous High-Throughput Enzyme Activity Signature Profiling and Multispectral Imaging

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    Molecular marker analysis allow for a rapid and advanced pre-selection and resistance screenings in plant breeding processes. During the phenotyping process, optical sensors have proved their potential to determine and assess the function of the genotype of the breeding material. Thereby, biomarkers for specific disease resistance traits provide valuable information for calibrating optical sensor approaches during early plant-pathogen interactions. In this context, the combination of physiological, metabolic phenotyping and phenomic profiles could establish efficient identification and quantification of relevant genotypes within breeding processes. Experiments were conducted with near-isogenic lines of H. vulgare (susceptible, mildew locus o (mlo) and Mildew locus a (Mla) resistant). Multispectral imaging of barley plants was daily conducted 0–8 days after inoculation (dai) in a high-throughput facility with 10 wavelength bands from 400 to 1,000 nm. In parallel, the temporal dynamics of the activities of invertase isoenzymes, as key sink specific enzymes that irreversibly cleave the transport sugar sucrose into the hexose monomers, were profiled in a semi high-throughput approach. The activities of cell wall, cytosolic and vacuole invertase revealed specific dynamics of the activity signatures for susceptible genotypes and genotypes with mlo and Mla based resistances 0–120 hours after inoculation (hai). These patterns could be used to differentiate between interaction types and revealed an early influence of Blumeria graminis f.sp. hordei (Bgh) conidia on the specific invertase activity already 0.5 hai. During this early powdery mildew pathogenesis, the reflectance intensity increased in the blue bands and at 690 nm. The Mla resistant plants showed an increased reflectance at 680 and 710 nm and a decreased reflectance in the near infrared bands from 3 dai. Applying a Support Vector Machine classification as a supervised machine learning approach, the pixelwise identification and quantification of powdery mildew diseased barley tissue and hypersensitive response spots were established. This enables an automatic identification of the barley-powdery mildew interaction. The study established a proof-of-concept for plant resistance phenotyping with multispectral imaging in high-throughput. The combination of invertase analysis and multispectral imaging showed to be a complementing validation system. This will provide a deeper understanding of optical data and its implementation into disease resistance screening

    In-Field Detection of Yellow Rust in Wheat on the Ground Canopy and UAV Scale

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    The application of hyperspectral imaging technology for plant disease detection in the field is still challenging. Existing equipment and analysis algorithms are adapted to highly controlled environmental conditions in the laboratory. However, only real time information from the field scale is able to guide plant protection measures and to optimize the use of resources. At the field scale, many parameters such as the optimal measurement distance, informative feature sets, and suitable algorithms have not been investigated. In this study, the hyperspectral detection and quantification of yellow rust in wheat was evaluated using two measurement platforms: a ground-based vehicle and an unmanned aerial vehicle (UAV). Different disease development stages and disease severities were provided in a plot-based field experiment. Measurements were performed weekly during the vegetation period. Data analysis was performed by three prediction algorithms with a focus on the selection of optimal feature sets. In this context, the across-scale application of optimized feature sets, an approach of information transfer between scales, was also evaluated. Relevant aspects for an on-line disease assessment in the field integrating affordable sensor technology, sensor spatial resolution, compact analysis models, and fast evaluation have been outlined and reflected upon. For the first time, a hyperspectral imaging observation experiment of a plant disease was comparatively performed at two scales, ground canopy and UAV
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