A Novel Correction Methodology to Improve the Performance of a Low-Cost Hyperspectral Portable Snapshot Camera

Author:

Genangeli Andrea1ORCID,Avola Giovanni2ORCID,Bindi Marco1ORCID,Cantini Claudio3ORCID,Cellini Francesco4,Riggi Ezio2ORCID,Gioli Beniamino5ORCID

Affiliation:

1. Department of Agriculture, Food, Environment and Forestry (DAGRI), University of Florence, P. le delle Cascine 18, 50144 Florence, Italy

2. Institute of Bioeconomy (IBE), National Research Council (CNR), Via Gaifami 18, 95126 Catania, Italy

3. Institute of Bioeconomy (IBE), National Research Council (CNR), Azienda Agraria “Santa Paolina”, S.P. n° 152 Aurelia Vecchia Km 43,300, 58022 Follonica, Italy

4. Centro Ricerche Metapontum Agrobios-Agenzia Lucana di Sviluppo e di Innovazione in Agricoltura (ALSIA), S.S. Jonica 106, Km 448,2, 75010 Metaponto di Bernalda, Italy

5. Institute of Bioeconomy (IBE), National Research Council (CNR), Via G. Caproni 8, 50145 Firenze, Italy

Abstract

The development of spectral sensors (SSs) capable of retrieving spectral information have opened new opportunities to improve several environmental and agricultural practices, e.g., crop breeding, plant phenotyping, land use monitoring, and crop classification. The SSs are classified as multispectral and hyperspectral (HS) based on the number of the spectral bands resolved and sampled during data acquisition. Large-scale applications of the HS remain limited due to the cost of this type of technology and the technical difficulties in hyperspectral data processing. Low-cost portable hyperspectral cameras (PHCs) have been progressively developed; however, critical aspects associated with data acquisition and processing, such as the presence of spectral discontinuities, signal jumps, and a high level of background noise, were reported. The aim of this work was to analyze and improve the hyperspectral output of a PHC Senop HSC-2 device by developing a general use methodology. Several signal gaps were identified as falls and jumps across the spectral signatures near 513, 650, and 930 nm, while the dark current signal magnitude and variability associated with instrumental noise showed an increasing trend over time. A data correction pipeline was successfully developed and tested, leading to 99% and 74% reductions in radiance signal jumps identified at 650 and 830 nm, respectively, while the impact of noise on the acquired signal was assessed to be in the range of 10% to 15%. The developed methodology can be effectively applied to other low-cost hyperspectral cameras.

Funder

Italian Ministry of University and Research

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

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