Disponible con licencia de Image Analyst.
Resumen
Calcula la precisión de un modelo de aprendizaje profundo comparando los objetos detectados por la herramienta Detectar objetos con aprendizaje profundo con los datos de la realidad del terreno.
Learn more about how Compute Accuracy For Object Detection works.
Uso
This tool generates a table containing information regarding the accuracy of the output from the Detect Objects Using Deep Learning tool.
The table contains accuracy metrics for each class in the detected data, as well as a row for all classes (overall accuracy). The table contains the following fields:
- Precision—The ratio of the number of true positives to the total number of predictions.
- Recall—The ratio of the number of true positives to the total number of positive predictions.
- F1_Score—The weighted average of the precision and recall. Values range from 0 to 1, where 1 means highest accuracy.
- AP—The Average Precision (AP) metric, which is the precision averaged across all recall values between 0 and 1 at a given Intersection over Union (IoU) value.
- True_Positive—The number of true positives generated by the model.
- False_Positive—The number of false positives generated by the model.
- False_Negative—The number of false negatives generated by the model.
For more information about the metrics provided in the output table and in the accuracy report, see How Compute Accuracy For Object Detection works.
The input ground reference data must contain polygons. If you have point or line data indicating the location of objects, use the Buffer tool to generate a polygon feature class before running this tool.
The Intersection over Union (IoU) ratio is used as a threshold for determining whether a predicted outcome is a true positive or a false positive. IoU is the amount of overlap between the bounding box around a predicted object and the bounding box around the ground reference data.
The intersecting area of the predicted bounding box and the ground reference bounding box
The total area of the predicted bounding box and ground reference bounding box combined
Sintaxis
ComputeAccuracyForObjectDetection(detected_features, ground_truth_features, out_accuracy_table, {out_accuracy_report}, {detected_class_value_field}, {ground_truth_class_value_field}, {min_iou}, {mask_features})
Parámetro | Explicación | Tipo de datos |
detected_features | The polygon feature class containing the objects detected from the Detect Objects Using Deep Learning tool. | Feature Class; Feature Layer |
ground_truth_features | The polygon feature class containing ground truth data. | Feature Class; Feature Layer |
out_accuracy_table | The output accuracy table. | Table |
out_accuracy_report (Opcional) | The name of the output accuracy report. The report is a PDF document containing accuracy metrics and charts. | File |
detected_class_value_field (Opcional) | The field in the detected objects feature class that contains the class values or class names. Si el nombre de campo no se especifica, se utilizará un campo Classvalue o Value. Si estos campos no existen, se identificará que todos los registros pertenecen a una sola clase. The class values or class names must match those in the ground reference feature class exactly. | Field |
ground_truth_class_value_field (Opcional) | The field in the ground truth feature class that contains the class values. Si el nombre de campo no se especifica, se utilizará un campo Classvalue o Value. Si estos campos no existen, se identificará que todos los registros pertenecen a una sola clase. The class values or class names must match those in the detected objects feature class exactly. | Field |
min_iou (Opcional) | The IoU ratio to use as a threshold to evaluate the accuracy of the object-detection model. The numerator is the area of overlap between the predicted bounding box and the ground reference bounding box. The denominator is the area of union or the area encompassed by both bounding boxes. The IoU ranges from 0 to 1. | Double |
mask_features (Opcional) | A polygon feature class that delineates the area or areas where accuracy will be computed. Only the features that intersect the mask will be assessed for accuracy. | Feature Class; Feature Layer |
Muestra de código
This example generates an accuracy table for a specified minimum IoU value.
# Import system modules
import arcpy
from arcpy.ia import *
# Check out the ArcGIS Image Analyst extension license
arcpy.CheckOutExtension("ImageAnalyst")
# Execute
ComputeAccuracyForObjectDetection(
"C:/DeepLearning/Data.gdb/detectedFeatures",
"C:/DeepLearning/Data.gdb/groundTruth",
"C:/DeepLearning/Data.gdb/accuracyTable",
"E:/DeepLearning/accuracyReport.pdf", "Class",
"Class", 0.5, " C:/DeepLearning/Data.gdb/AOI")
This example generates an accuracy table for a specified minimum IoU value.
# Import system modules
import arcpy
from arcpy.ia import *
# Check out the ArcGIS Image Analyst extension license
arcpy.CheckOutExtension("ImageAnalyst")
# Set local variables
detected_features = "C:/DeepLearning/Data.gdb/detectedFeatures"
ground_truth_features = "C:/DeepLearning/Data.gdb/groundTruth"
out_accuracy_table = "C:/DeepLearning/Data.gdb/accuracyTable"
out_accuracy_report = "C:/DeepLearning/accuracyReport.pdf"
detected_class_value_field = "Class"
ground_truth_class_value_field = "Class"
min_iou = 0.5
mask_features = "C:/DeepLearning/Data.gdb/AOI"
# Execute
ComputeAccuracyForObjectDetection(detected_features,
ground_truth_features, out_accuracy_table,
out_accuracy_report, detected_class_value_field,
ground_truth_class_value_field, min_iou, mask_features)
Información de licenciamiento
- Basic: Requiere Image Analyst
- Standard: Requiere Image Analyst
- Advanced: Requiere Image Analyst