| Literature DB >> 22163940 |
Antonia Macedo-Cruz1, Gonzalo Pajares, Matilde Santos, Isidro Villegas-Romero.
Abstract
The aim of this paper is to classify the land covered with oat crops, and the quantification of frost damage on oats, while plants are still in the flowering stage. The images are taken by a digital colour camera CCD-based sensor. Unsupervised classification methods are applied because the plants present different spectral signatures, depending on two main factors: illumination and the affected state. The colour space used in this application is CIELab, based on the decomposition of the colour in three channels, because it is the closest to human colour perception. The histogram of each channel is successively split into regions by thresholding. The best threshold to be applied is automatically obtained as a combination of three thresholding strategies: (a) Otsu's method, (b) Isodata algorithm, and (c) Fuzzy thresholding. The fusion of these automatic thresholding techniques and the design of the classification strategy are some of the main findings of the paper, which allows an estimation of the damages and a prediction of the oat production.Entities:
Keywords: CIELab colour space; agricultural images; automatic thresholding; digital image sensor; fuzzy error matrix; oat frost damage; unsupervised classification
Mesh:
Year: 2011 PMID: 22163940 PMCID: PMC3231418 DOI: 10.3390/s110606015
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.(a) and (b) Selection and sample delimitation of the oat crop to be photog aphed; (c) system geometry with the optical axis perpendicular to the ground.
Figure 2.(a) Original digital image; (b) Classification results obtained by the unsupervised strategy (four re-clustering).
Figure 3.(a) Original image; (b) Classification results obtained by the unsupervised strategy (four re-clustering).
Figure 4.(a) Reference Data: sample units on the original image. (b) Sample units on the classified image.
Deterministic and fuzzy error matrices.
Classifier’s accuracy and categories’ accuracy (commission errors).
| 22,600 | 91% | 9% | 23,600 | 95% | 5% | |
| 8,800 | 90% | 10% | 9,400 | 96% | 4% | |
| 9,200 | 92% | 8% | 9,800 | 98% | 2% | |
| 22,800 | 94% | 6% | 23,400 | 97% | 3% | |
Expert’s accuracy and omission errors.
| 22,600 | 94% | 6% | 23,200 | 97% | 3% | |
| 8,800 | 81% | 19% | 10,000 | 93% | 7% | |
| 9,200 | 82% | 18% | 10,200 | 91% | 9% | |
| 22,800 | 100% | 0% | 22,800 | 100% | 0% | |
Classifier and expert’s accuracy and errors for the combined (CT) and simple (IS, OT, FU) thresholding approaches.
| 91.78 | 89.45 | 8.22 | 10.55 | 96.44 | 95.08 | 3.56 | 4.92 | |
| IS | 87.71 | 87.70 | 12.29 | 12.30 | 94.83 | 94.01 | 5.17 | 5.99 |
| OT | 85.67 | 83.10 | 14.33 | 16.90 | 90.99 | 88.20 | 9.01 | 11.80 |
| FU | 88.44 | 89.03 | 11.56 | 10.97 | 94.97 | 94.89 | 5.03 | 5.11 |