Jump to content
  • Chatbox

    You don't have permission to chat.
    Load More

    How to write an algorithm in Erdas Imagine Model maker ?

    zoarder
    By zoarder,
    Dear All, i hope you all are fine. I am doing my Msc thesis on Urban Heat island modeling. One part of the model i have a calculation regarding LST calculation from Landsat ETM image. I am using mono-window technique. Manually i calculated LST for one pixel and its ok. But the problem is working in Erdas imagine model maker. My algorithm is showing error. My model is as follows in erdas model maker.   { -67.355351 ( 1-$n4_memory - $n6_memory ) + ( 0.458606 ( 1 - $n4_memory - $n6_memory ) + $n4

    Mosaicing

    gesunga
    By gesunga,
    Hello  What program can i use to mosaic orthorectified images with color balancing thanks in advance

    Education online

    randy
    By randy,
    I am wondering if anyone can share some information about online degrees.  I am trying to get an online Bachelor's degree in a field directly relating to GIS.  I found a program that looked pretty good and a school called American Sentinell, but that turned out to be a dead end.  They no longer offer that degree program.  I have been going down a list of schools that I received from American Sentinell, and so far most of them are a dead end.  The closest I've come is a degree in Information Tech

    Free ESRI shapefile editor

    Mirza
    By Mirza,
    Open and edit ESRI shapefiles .shp and .dbf attributes in BabaCAD using this powerful GIS extension for BabaCAD. Use TableView with excel-like filter and ZoomTo/Highlight features to quickly navigate through spahes in workspace. Easy to use, save shapes to dxf files. Arrange features using layers.   Download free at http://www.babacad.com/bem

    LAZ Clone Wars

    Lurker
    By Lurker,
    This articles brought in sharing area, and interesting, so I post here to make some discussion, thanx bigears   here : http://www.gisarea.com/topic/5209-esri-las-optimizer-12/     Friends of LASzip and LAZ, it has come to my attention (from more than one source) that a certain company East of LA has started to more aggressively promote their proprietary LiDAR format known as the “LAZ clone” (more here, here, here and here but also read the comments) by approaching individual stake holders

Portal by DevFuse · Based on IP.Board Portal by IPS
  • Forum Statistics

    8.8k
    Total Topics
    43.5k
    Total Posts
  • Latest Posts

    • There are many different frequencies of light that reach Earth, some of which are visible to us and others of which are not. Because of its special characteristics, shortwave infrared (SWIR) stands out among these frequencies and is very helpful for Light Detection and Ranging (LIDAR) systems. Like SONAR, which utilizes sound waves to determine distances, LIDAR employs laser pulses. The danger of SWIR waves is that they do not reach the retina through the cornea and lens of the human eye. SWIR is therefore eye-safe and perfect for real-world uses like LIDAR systems. A novel technique for creating silver telluride (Ag₂Te) colloidal quantum dots has been demonstrated by researchers at the Institute of Photonic Sciences (ICFO). In LIDAR systems, quantum dots are employed as light detectors, also known as photodetectors. The new technique overcomes the drawbacks of conventional SWIR photodetectors, which employ hazardous heavy metals like lead or mercury in their quantum dot constituents. A more eco-friendly substitute, silver telluride colloids, has already been studied for application in quantum dots. Despite their potential, a number of barriers prevent them from being widely used. By refining the surface engineering of silver telluride colloidal quantum dots to extract maximum efficiency while being environmentally benign, the current work tackles these issues. Quantum dots and their toxicity The diameters of quantum dots, which are tiny semiconductor particles, range from 2 to 10 nanometers. A human hair's breadth might accommodate about 15,000 quantum dots placed side by side for comparison. A quantum dot contains trapped electrons. The distinctive electrical and optical characteristics observed are caused by these quantum confinement effects. Because of their inherent stability and optoelectronic (light and electrical) qualities, hazardous metals are a desirable choice for their components. Even though there are safer substitutes, such as silver telluride colloids, their efficacy in detecting both strong and dim light is hindered by noise, long reaction times, and a narrow light detection range. Engineering the surface The researchers used two approaches to these problems. They began by refining the synthesis of colloidal quantum dots made of silver telluride. They were able to eliminate surface imperfections on semiconductor particles, which are known to reduce efficiency, by refining the procedure. The invention occurs in the second step, which takes place after synthesis. Following the synthesis, scientists treated the quantum dot's thin layer with silver nitrate. By introducing contaminants into the quantum dots through the application of silver nitrate, the doping procedure modifies the electrical characteristics of the dots. The silver nitrate in this instance transformed the quantum dots from p-type semiconductors to n-type semiconductors. The p and n show whether the current flowing through the material is caused by positive or negative charges. The n-type quantum dots do not have the problem of high dark current and poor performance as the p-type does. Applications of LIDAR that are eye-safe The SWIR photodetector composed of colloidal quantum dots of silver telluride was tested by the researchers. By drastically lowering the dark current, the photodetector improved accuracy and decreased noise. The gadget demonstrated improved light detection efficiency, collecting light of a certain wavelength with a 30% efficiency rate. Additionally, the detector can measure distances precisely because of its fast response time of only 25 nanoseconds. Lastly, a far greater range of light intensities may be handled by the detector. source: interestingengineering
    • Vacant lots, though overlooked or seen as eyesores by many, represent opportunities. UConn College of Agriculture, Health and Natural Resources doctoral researcher Pan Zhang and Assistant Professor Sohyun Park, both in the Department of Plant Science and Landscape Architecture, have created a framework to help cities and community members assess and prioritize which lots will have the biggest impact—for everyone—if they are repurposed. Their research is published in the journal Sustainability. Due to rapid deindustrialization and white flight, Hartford is home to some of the poorest neighborhoods in the country, and areas of North Hartford were designed as an urban renewal Promise Zone in 2008. Zhang explains the project started in 2018 as part of a class project with retired Associate Professor Kristin Schwab. The class she was taking was tasked by the planners from the City of Hartford blight remediation team along with community stakeholders to evaluate and assess city-owned vacant lots. The city wanted to have a framework to systematically manage the lots and potentially pick sites that were expected to be most suitable, and successful, for regeneration and placemaking purposes. Zhang partnered with Park to continue developing the framework after the semester. Urban greening efforts are underway in other post-industrial cities, like Detroit and Cleveland, but Park says these efforts tend to be driven by single goals, either economic or environmental. The researchers wanted to create a comprehensive framework that could accomplish many goals, and that is how they created the Vacant Land Assessment System (VLAS). These kinds of projects face several challenges, such as zoning restrictions, potential remediation of brownfield sites, ensuring the projects address community needs and avoid gentrification, as well as how to reach consensus on the reuse programs if lands were privately owned. "First, the city gave us a spreadsheet with all the street addresses of their properties and when we started to geocode the inventory, we realized there were spatial patterns that were categorizable," says Zhang. Using publicly available information and geographic information systems (ArcGIS) tools they analyzed features of the properties, geographical distribution, and potential strategies for reclaiming the vacant lots. The researchers analyzed the characteristics of the lots based on their proximity to different facilities, infrastructure, schools, and parks, for example, to assess future reuse opportunities. They organized the properties into four types, or typologies, and categorized them as Row House, Street Corner, Commercial/Industrial, and Main Street. Then reuse programs were designed for each category to create some generalized strategies. "After that, we consulted with the city about which sites to work on in North Hartford. Then we worked with the planners, neighborhood NGOs, and stakeholders to try to apply those sustainable placemaking strategies. We got good feedback and reactions from the public when we presented the final design outcomes," says Zhang. Zhang says the VLAS framework leverages existing spatial data and resources so the tools can be easily used by other planners in any municipality and can help with planning and managing spaces from site to neighborhood to city scales and can also serve as an assessment tool. Another essential quality of the framework is that it links scientific expertise with policymakers and community stakeholders to create a collaborative working environment. Though the project implementing the VLAS framework has not gone forward yet, Zhang hopes that it will one day, "I continued to work in that neighborhood the summer after that project and residents still remember me and that project. It is something the residents were looking forward to." Zhang feels the approach could have lasting ecological impacts as more greening lots could not only increase access to green spaces but also increase connectivity with forests in and around cities. "We want to greenify those lands that have been disregarded and underestimated in the city setting. The existing native trees in those vacant lots might have more potential than people think," says Park. "They might be good for local ecosystems, even though that's not an intact ecosystem, but rather what's called a novel ecosystem where urban wildlife can thrive. Also, actively greenifying those lands helps the community's health and well-being in the long term and may be able to help break the cycle of poverty, and violence that is prevalent in those areas. "Even though this is a small case study, when we can scale up these practices to a broader level, we might be touching upon some societal problems that we have. There might be some implications that we can draw from this research." By using the holistic approach and multi-scale thinking of VLSA, greening vacant lots could be for the common benefit of all. Park stresses that community engagement is key. "Even though this is a research-based, data-driven study, all things that could happen should be involved with members who live in that neighborhood. I think connections from the research to community engagement and participation should be key to making things happen." source: VLAS: Vacant Land Assessment System for Urban Renewal and Greenspace Planning in Legacy Cities
    • Thanks for the updates!
    • A new study introduces the Community Land Active Passive Microwave Radiative Transfer Modeling platform (CLAP)—a unified multi-frequency microwave scattering and emission model designed to revolutionize land surface monitoring. This cutting-edge platform combines active and passive microwave signals to offer potentially accurate simulations of soil moisture and vegetation conditions. By incorporating advanced interaction models for soil and vegetation, CLAP has the potential to address key limitations in existing remote sensing technologies, enabling the improvement of land monitoring precision. The study showcases CLAP's ability to improve microwave signal simulations, especially at high frequencies, marking a major step forward in ecosystem management and climate change research. Microwave remote sensing is essential for land monitoring, providing crucial insights into soil moisture and vegetation health by measuring the microwave radiation and backscatter emitted and scattered by the surface. However, current models rely heavily on zeroth-order radiative transfer theory and empirical assumptions, often overlooking dynamic changes in vegetation and soil properties (structure, moisture and temperature). These limitations result in inconsistencies and reduced accuracy across different frequencies and polarizations. Given these challenges, there is an urgent need for more refined research into the scattering and emission mechanisms of multi-frequency microwave signals to improve the precision and reliability of remote sensing technologies. A team of researchers from the University of Twente has published a paper in the Journal of Remote Sensing, introducing the Community Land Active Passive Microwave Radiative Transfer Modeling platform (CLAP) a multi-frequency microwave scattering and emission model, which integrates advanced soil surface scattering (ATS+AIEM) and vegetation scattering (TVG) models. CLAP incorporates appropriate vegetation structure, dynamic vegetation water content (VWC) and temperature changes, significantly improving upon existing technologies. Additionally, CLAP uncovers the frequency-dependent nature of grassland optical depth and highlights the significant impact of vegetation temperature on high-frequency signals, offering new insights for more accurate vegetation and soil monitoring. The core strength of CLAP lies in its detailed modeling of soil and vegetation components. The team used long-term in situ observations from the Maqu site, including microwave signals, soil moisture, temperature profiles, and vegetation data, to drive CLAP and evaluate the model performance respectively. Results showed that during the summer, CLAP with cylinder parameterization for vegetation representation simulated grassland backscatter at X-band and C-band with RMSE values of 1.8 dB and 1.9 dB, respectively, compared to 3.4 dB and 3.0 dB from disk parameterization. The study also discovered that vegetation temperature variations significantly affect high-frequency signal diurnal changes, while vegetation water content changes primarily influence low-frequency signals. For example, at C-band, vegetation temperature fluctuations had a greater impact on signal changes (correlation coefficient R of 0.34), while at S-band, vegetation water content had a stronger influence (R of 0.46). These findings underscore the importance of dynamic vegetation and soil properties in microwave signal scattering and emission processes, which CLAP accurately reflects. Dr. Hong Zhao, the lead researcher, commented, "The CLAP platform represents a major advancement in microwave remote sensing. By incorporating appropriate vegetation structure, dynamic vegetation and soil water content and temperature into the model, CLAP offers a more accurate representation of microwave signal scattering and emission processes. This innovation will significantly enhance our ability to monitor vegetation and soil conditions, providing more reliable data for ecosystem management and climate change research." The team utilized extensive in situ data from the Maqu site as well as satellite microwave observations. These comprehensive datasets allowed the researchers to rigorously assess CLAP's performance across various frequencies and polarizations, ensuring its accuracy and reliability. The development of CLAP opens new possibilities for the future of microwave remote sensing. This technology can be integrated into upcoming satellite missions such as CIMR and ROSE-L to enhance the precision of soil moisture and vegetation monitoring. Additionally, CLAP can be incorporated into data assimilation frameworks to provide more accurate inputs for land surface models. The widespread application of this technology promises to have a profound impact on global environmental monitoring, agricultural production, and climate change research, supporting sustainable development efforts worldwide. source: https://dx.doi.org/10.34133/remotesensing.0415  
  • Latest Topics

  • Recent Achievements

    • heyworld earned a badge
      Week One Done
    • heyworld earned a badge
      One Month Later
    • heyworld earned a badge
      One Year In
    • T1nmaN earned a badge
      First Post
    • mark312 earned a badge
      Week One Done
×
×
  • Create New...

Important Information

By using this site, you agree to our Terms of Use.

Disable-Adblock.png

 

If you enjoy our contents, support us by Disable ads Blocker or add GIS-area to your ads blocker whitelist