Sample interview questions: Explain how you would assess the accuracy of land cover classification using remote sensing data.
Sample answer:
Assessment of Land Cover Classification Accuracy Using Remote Sensing Data
1. Reference Data Collection:
- Acquire high-resolution aerial imagery, field surveys, or LiDAR data as reference data.
- Ensure the reference data covers a representative sample of the study area and encompasses the range of land cover classes of interest.
2. Sample Dataset Preparation:
- Divide the remote sensing data into training and testing datasets.
- The training dataset is used to build the classification model, while the testing dataset is used for accuracy assessment.
3. Classification Model Development:
- Utilize a supervised classification algorithm such as Maximum Likelihood, Support Vector Machines, or Random Forest to build a classification model.
- Train the model using the training dataset, optimizing model parameters for optimal accuracy.
4. Accuracy Assessment:
- Calculate overall accuracy as a percentage of correctly classified pixels: (Correctly Classified Pixels / Total Pixels) x 100%
- Compute class-specific accuracy to evaluate the performance for each land cover class: (Correctly Classified Pixels for Class / Total Pixels for Class) x 100%
- Consider additional metrics such as precision, recall, and F1-score for a more comprehensive understanding of classification performance.
5. Error Matrix Analysis:
- Construct an error matrix that t… Read full answer
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