Litcius/Paper detail

From spectrum to yield: advances in crop photosynthesis with hyperspectral imaging

Debabrata Panda, Srujana Mohanty, Sukanta Das, Jeetendra Senapaty, Deepak Kumar Sahoo, Baijayantimala Mishra, Mirza Jaynul Baig, Lipipuspa Behera

2025Photosynthetica10 citationsDOIOpen Access PDF

Abstract

Ensuring global food security requires noninvasive techniques for optimizing resource use and monitoring crop health. Hyperspectral imaging (HSI) enables the precise analysis of plant physiology by capturing spectral data across narrow bands. This review explores HSI's role in agriculture, particularly its integration with unmanned aerial vehicles, AI-driven analytics, and machine learning. These advancements allow real-time monitoring of photosynthesis, chlorophyll fluorescence, and carbon assimilation, linking spectral data to plant health and agronomic decisions. Key indicators such as solar-induced fluorescence and vegetation indices enhance crop stress detection. This work compares HSI-derived metrics in differentiating nutrient deficiencies, drought, and disease. Despite its potential, challenges remain in data standardization and spectral interpretation. This review discusses solutions such as molecular phenotyping and predictive modeling, for AI-driven precision agriculture. Addressing these gaps, HSI is poised to revolutionize farming, improve climate resilience, and ensure food security.

Topics & Concepts

Hyperspectral imagingPhotosynthesisYield (engineering)CropAgronomyBiologyEnvironmental scienceBotanyRemote sensingPhysicsGeographyThermodynamicsRemote Sensing in AgricultureSpectroscopy and Chemometric AnalysesRemote Sensing and Land Use
From spectrum to yield: advances in crop photosynthesis with hyperspectral imaging | Litcius