If the following table does not display properly, then please visit this internet site <https://www.nass.usda.gov/Research_and_Science/Cropland/metadata/meta.php> to view the original metadata file.
USDA National Agricultural Statistics Service, 2023 North Carolina Cropland Data Layer
STATEWIDE AGRICULTURAL ACCURACY REPORT
Crop-specific covers only *Correct Accuracy Error Kappa
------------------------- ------- -------- ------ -----
FSA Crops 397,732 77.8% 22.2% 0.716
Cover Attribute *Correct Producer's Omission User's Commission Cond'l
Type Code Pixels Accuracy Error Kappa Accuracy Error Kappa
---- ---- ------ -------- ----- ----- -------- ----- -----
Corn 1 119,234 88.5% 11.5% 0.867 90.7% 9.3% 0.892
Cotton 2 43,900 79.6% 20.4% 0.785 90.1% 9.9% 0.895
Rice 3 3 18.8% 81.3% 0.187 100.0% 0.0% 1.000
Sorghum 4 342 18.4% 81.6% 0.183 71.4% 28.6% 0.713
Soybeans 5 151,101 85.1% 14.9% 0.817 83.7% 16.3% 0.801
Sunflower 6 9 6.6% 93.4% 0.066 39.1% 60.9% 0.391
Peanuts 10 12,223 76.9% 23.1% 0.766 94.4% 5.6% 0.943
Tobacco 11 2,247 65.8% 34.2% 0.657 86.3% 13.7% 0.862
Sweet Corn 12 38 25.5% 74.5% 0.255 82.6% 17.4% 0.826
Pop or Orn Corn 13 1 4.8% 95.2% 0.048 50.0% 50.0% 0.500
Barley 21 9 5.2% 94.8% 0.052 64.3% 35.7% 0.643
Spring Wheat 23 0 0.0% 100.0% 0.000 n/a n/a n/a
Winter Wheat 24 875 23.4% 76.6% 0.233 67.5% 32.5% 0.673
Dbl Crop WinWht/Soybeans 26 47,875 82.9% 17.1% 0.818 84.3% 15.7% 0.833
Rye 27 195 24.8% 75.2% 0.248 63.7% 36.3% 0.637
Oats 28 37 10.4% 89.6% 0.104 48.1% 51.9% 0.480
Millet 29 134 21.1% 78.9% 0.211 67.7% 32.3% 0.677
Canola 31 3 16.7% 83.3% 0.167 100.0% 0.0% 1.000
Rape Seed 34 37 36.3% 63.7% 0.363 69.8% 30.2% 0.698
Alfalfa 36 45 20.8% 79.2% 0.208 63.4% 36.6% 0.634
Other Hay/Non Alfalfa 37 9,892 42.5% 57.5% 0.414 56.7% 43.3% 0.557
Sugarbeets 41 0 0.0% 100.0% 0.000 n/a n/a n/a
Dry Beans 42 33 30.3% 69.7% 0.303 82.5% 17.5% 0.825
Potatoes 43 78 39.8% 60.2% 0.398 66.1% 33.9% 0.661
Other Crops 44 9 5.6% 94.4% 0.056 39.1% 60.9% 0.391
Sweet Potatoes 46 3,071 73.3% 26.7% 0.732 90.1% 9.9% 0.901
Misc Vegs & Fruits 47 0 0.0% 100.0% 0.000 n/a n/a n/a
Watermelons 48 238 36.4% 63.6% 0.364 74.4% 25.6% 0.744
Onions 49 0 0.0% 100.0% 0.000 0.0% 100.0% 0.000
Cucumbers 50 6 5.6% 94.4% 0.056 60.0% 40.0% 0.600
Peas 53 4 5.3% 94.7% 0.053 40.0% 60.0% 0.400
Tomatoes 54 10 17.5% 82.5% 0.175 50.0% 50.0% 0.500
Herbs 57 42 21.8% 78.2% 0.218 84.0% 16.0% 0.840
Clover/Wildflowers 58 0 0.0% 100.0% 0.000 n/a n/a n/a
Sod/Grass Seed 59 1,202 51.1% 48.9% 0.510 74.9% 25.1% 0.749
Switchgrass 60 0 0.0% 100.0% 0.000 n/a n/a n/a
Fallow/Idle Cropland 61 1,925 25.5% 74.5% 0.252 47.8% 52.2% 0.474
Peaches 67 35 38.9% 61.1% 0.389 58.3% 41.7% 0.583
Apples 68 389 64.5% 35.5% 0.645 79.9% 20.1% 0.799
Grapes 69 30 31.9% 68.1% 0.319 56.6% 43.4% 0.566
Christmas Trees 70 39 14.6% 85.4% 0.145 62.9% 37.1% 0.629
Other Tree Crops 71 18 24.7% 75.3% 0.247 62.1% 37.9% 0.621
Pecans 74 1 1.6% 98.4% 0.016 100.0% 0.0% 1.000
Pears 77 0 0.0% 100.0% 0.000 n/a n/a n/a
Aquaculture 92 0 0.0% 100.0% 0.000 n/a n/a n/a
Open Water 111 8,535 91.7% 8.3% 0.916 90.5% 9.5% 0.904
Developed/Open Space 121 38,966 99.0% 1.0% 0.989 80.0% 20.0% 0.791
Developed/Low Intensity 122 18,674 99.5% 0.5% 0.995 84.3% 15.7% 0.840
Developed/Med Intensity 123 8,259 99.9% 0.1% 0.999 91.7% 8.3% 0.916
Developed/High Intensity 124 2,755 100.0% 0.0% 1.000 97.9% 2.1% 0.979
Barren 131 500 47.2% 52.8% 0.471 62.0% 38.0% 0.620
Deciduous Forest 141 89,799 82.0% 18.0% 0.794 74.4% 25.6% 0.711
Evergreen Forest 142 51,564 70.4% 29.6% 0.676 63.7% 36.3% 0.607
Mixed Forest 143 30,076 49.4% 50.6% 0.465 57.3% 42.7% 0.544
Shrubland 152 3,918 27.3% 72.7% 0.265 38.3% 61.7% 0.373
Grassland/Pasture 176 27,561 65.1% 34.9% 0.631 53.8% 46.2% 0.517
Woody Wetlands 190 56,326 77.3% 22.7% 0.753 70.8% 29.2% 0.684
Herbaceous Wetlands 195 3,297 47.0% 53.0% 0.468 66.7% 33.3% 0.665
Triticale 205 3 3.5% 96.5% 0.035 20.0% 80.0% 0.200
Cantaloupes 209 21 55.3% 44.7% 0.553 84.0% 16.0% 0.840
Broccoli 214 0 0.0% 100.0% 0.000 n/a n/a n/a
Peppers 216 10 13.7% 86.3% 0.137 83.3% 16.7% 0.833
Greens 219 0 0.0% 100.0% 0.000 n/a n/a n/a
Strawberries 221 0 0.0% 100.0% 0.000 0.0% 100.0% 0.000
Squash 222 2 2.0% 98.0% 0.020 22.2% 77.8% 0.222
Dbl Crop WinWht/Corn 225 352 32.2% 67.8% 0.322 72.0% 28.0% 0.720
Dbl Crop Oats/Corn 226 14 7.4% 92.6% 0.074 29.2% 70.8% 0.292
Dbl Crop Triticale/Corn 228 704 58.5% 41.5% 0.585 78.5% 21.5% 0.785
Pumpkins 229 74 38.7% 61.3% 0.387 75.5% 24.5% 0.755
Dbl Crop WinWht/Sorghum 236 49 17.4% 82.6% 0.174 55.1% 44.9% 0.550
Dbl Crop Barley/Corn 237 463 53.7% 46.3% 0.536 70.3% 29.7% 0.702
Dbl Crop WinWht/Cotton 238 39 24.5% 75.5% 0.245 92.9% 7.1% 0.929
Dbl Crop Soybeans/Oats 240 182 12.7% 87.3% 0.127 67.7% 32.3% 0.676
Blueberries 242 130 43.5% 56.5% 0.435 63.4% 36.6% 0.634
Cabbage 243 3 4.1% 95.9% 0.041 60.0% 40.0% 0.600
Eggplants 248 0 0.0% 100.0% 0.000 0.0% 100.0% 0.000
Dbl Crop Barley/Soybeans 254 356 36.9% 63.1% 0.368 83.6% 16.4% 0.836
*Correct Pixels represents the total number of independent validation pixels correctly identified in the error matrix.
**The Overall Accuracy represents only the FSA row crops and annual fruit and vegetables (codes 1-61, 66-80, 92 and 200-255).
FSA-sampled grass and pasture. Non-agricultural and NLCD-sampled categories (codes 62-65, 81-91 and 93-199) are not included in the Overall Accuracy.
The accuracy of the non-agricultural land cover classes within the Cropland Data Layer is entirely dependent upon the USGS, National Land Cover Database. Thus, the USDA NASS recommends that users consider the NLCD for studies involving non-agricultural land cover. For more information on the accuracy of the NLCD please reference <https://www.mrlc.gov/>.
Attribute_Accuracy_Value:
Classification accuracy is generally 85% to 95% correct for the major crop-specific land cover categories. See the 'Attribute Accuracy Report' section of this metadata file for the detailed accuracy report.
Attribute_Accuracy_Explanation:
The strength and emphasis of the CDL is crop-specific land cover categories. The accuracy of the CDL non-agricultural land cover classes is entirely dependent upon the USGS, National Land Cover Database. Thus, the USDA NASS recommends that users consider the NLCD for studies involving non-agricultural land cover.
These definitions of accuracy statistics were derived from the following book: Congalton, Russell G. and Kass Green. Assessing the Accuracy of Remotely Sensed Data: Principles and Practices. Boca Raton, Florida: CRC Press, Inc. 1999. The 'Producer's Accuracy' is calculated for each cover type in the ground truth and indicates the probability that a ground truth pixel will be correctly mapped (across all cover types) and measures 'errors of omission'. An 'Omission Error' occurs when a pixel is excluded from the category to which it belongs in the validation dataset. The 'User's Accuracy' indicates the probability that a pixel from the CDL classification actually matches the ground truth data and measures 'errors of commission'. The 'Commission Error' represent when a pixel is included in an incorrect category according to the validation data. It is important to take into consideration errors of omission and commission. For example, if you classify every pixel in a scene to 'wheat', then you have 100% Producer's Accuracy for the wheat category and 0% Omission Error. However, you would also have a very high error of commission as all other crop types would be included in the incorrect category. The 'Kappa' is a measure of agreement based on the difference between the actual agreement in the error matrix (i.e., the agreement between the remotely sensed classification and the reference data as indicated by the major diagonal) and the chance agreement which is indicated by the row and column totals. The 'Conditional Kappa Coefficient' is the agreement for an individual category within the entire error matrix.