Abstract:Crop spectrum characteristic analysis plays an important role in growth condition monitoring and nutrition diagnosis for precision management. It is also the theoretical basis of remote sensing data analysis. In order to predict the nutrient content of crop nondestructively and quickly, a spectrum detection system for summer corn was developed to measure the reflectance of 350~820nm. The system had three parts, i.e., optical sensor, data storage and transmission module and controller. And spectral information collection software included three modules, i. e., acquisition parameters, acquisition control and data management. Calibration experiment was carried out to test the performance of spectrum analyzing system. The correlation with ASD Field Spec Hand Held 2 was analyzed. The result showed that the average determination coefficient was 0.94. It was used to detect the chlorophyll and moisture contents of corn leaves. The relationships were analyzed based on the one and twodimensional correlations, respectively. Firstly, the chlorophyll content detecting model was established based on firstorder differential and Kvalue clustering method by using 548nm,594nm and 652nm with determination coefficients of 0.43 and 0.36. Then, the response relationships between moisture content and chlorophyll content in corn leaves were discussed and the model was revised by wavelengths at 480nm, 594nm, 652nm and 819nm. The revised chlorophyll content detecting model was established with determination coefficients of 0.47 and 0.34.