PReSens: Proximal and Remote Sensing for Soil and Vegetation (ETH VVZ: 701-1634-00L)
| 2026_FS_PReSens | |
| 20.02.2026 - 29.05.2026 | |
| 13 x 4 h plus 1 Tag | |
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Beginn Anmeldefrist: 05.01.2026 Ende Anmeldefrist: 26.01.2026 |
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| Lindau | |
| 4 | |
| 4 | |
| Free of Charge for all Master and PhD students (PSC, LSZGS) | |
| Course Description The course introduces imaging and spectroscopy techniques spanning spectral and spatial scales: from UV–visible and near-infrared to X-ray methods, and from microns to entire landscapes. Using ground, drone, and satellite platforms, students gain hands-on experience acquiring, processing, and interpreting data on soil and vegetation in environmental and agricultural systems. In the first half of the semester, students are introduced to a series spectroscopy and imaging processing techniques. Each weekly module consists of a two-hour theoretical lecture establishing the scientific foundations of the method, followed by self-guided exercises (with dedicated support hours) focusing on data processing and analysis using real datasets drawn from the lecturers’ research. Students progress from analysing individual spectra, to applying classical and advanced image processing techniques, through the following modules: ? The Leaf Spectrum; ? The Soil Spectrum; ? Imaging Spectroscopy: Classification and Temporal Change Analysis; ? Seeing Soil from the Sky: Remote sensing of soil properties; ? Deep Learning for Tree Species Identification; ? X-ray tomography: Image Segmentation of Soil Microstructure; ? Drone-based Imaging: from Canopy to Landscape Structure In the second half of the semester, students work in groups on a project focused on one technique of their choice. They design and implement a sampling strategy, collect and acquire their own data in the field, and apply the analytical approaches learned earlier in the course. Building on these skills, they process, interpret, and critically discuss their results to address a specific research question. The course is held at the ETH Eschikon-Lindau 皇冠体育,皇冠体育app, offering an immersive learning experience that combines classroom learning with hands-on field projects. The unique setting enables students to develop practical skills and apply the methods learned directly in both forest and agricultural systems. Course Program / Learning Objectives Through lectures, data analysis, and field projects, students will be able to: ? Explain energy–matter interactions ? Acquire and pre-process spectral (imaging) datasets ? Analyse and interpret spectral (imaging) datasets ? Report and critically assess the advantages and limitations of spectroscopy techniques | |
| Dr. Fanny Petibon, Dr. Mirela Beloiu Schwenke, Dr. Patrick Duddek | |
| 2 | |
| PhD Students Postdocs if places available | |
| There are no formal prerequisites. Students are expected to have a basic understanding of soil science, plant physiology, and data science, as well as a strong interest in developing practical skills for soil and vegetation monitoring. Prior experience with GIS, or completion of 701-0951-00L “GIS – Introduction into Geoinformation Science” (or an equivalent course), is an advantage. | |
| English | |
| PhD students will take part in the MSc course 701-1634-00L PReSens: Proximal and Remote Sensing for Soil and Vegetation. A reduced workload will allow to acquire 2 instead of the 5 ECTS points: Participants enrolled in the PSC are required to i) participate in the lectures, and ii) submit 4 of 8 exercises. Participation in the group work conducted during the second half of the semester must be agreed with the lecturer on an individual basis at the beginning of the semester and may allow PhD students to acquire an additional 1 ECTS credit. | |
By registering you agree to the PSC course terms and conditions AGBs | |
| Cancellation of a course registration should be arranged with the course coordination office psc_phdprogram@ethz.ch and is possible free of charge up to 2 weeks before the course starts. Later cancellations and failure to attend or incomplete attendance without documented justification will incur a fee of 200 CHF. | |
| Dr. Bojan Gujas (psc_phdprogram@ethz.ch) | |
| FS26_PReSens_FP.pdfvertical_align_bottom |