Analisi di fatture e ricevute con Amazon Textract - Amazon Textract

Le traduzioni sono generate tramite traduzione automatica. In caso di conflitto tra il contenuto di una traduzione e la versione originale in Inglese, quest'ultima prevarrà.

Analisi di fatture e ricevute con Amazon Textract

Per analizzare i documenti di fattura e ricevuta, si utilizza l'API AnalyzeExpense e si passa un file di documento come input.AnalyzeExpenseè un'operazione sincrona che restituisce una struttura JSON contenente il testo analizzato. Per ulteriori informazioni, consultare Analisi di fatture e ricevute.

Per analizzare fatture e ricevute in modo asincrono, utilizzareStartExpenseAnalysisper iniziare a elaborare un file di documento di input e utilizzareGetExpenseAnalysisper ottenere i risultati.

Puoi fornire un documento di input come matrice di byte dell'immagine (byte dell'immagine codificata in formato Base64) o come oggetto Amazon S3. In questa procedura, viene caricato un file immagine nel bucket S3 e viene specificato il nome file.

Per analizzare una fattura o una ricevuta (API)
  1. Se non lo hai già fatto:

    1. Crea o aggiorna un utente IAM conAmazonTextractFullAccesseAmazonS3ReadOnlyAccessautorizzazioni. Per ulteriori informazioni, consultare Fase 1: Impostazione di un account AWS e creazione di un utente IAM.

    2. Installa e configura la AWS CLI e gli SDK AWS. Per ulteriori informazioni, consultare Fase 2: Configurazione diAWS CLIeAWSSDK.

  2. Carica un'immagine contenente un documento nel bucket S3.

    Per istruzioni, consultaCaricamento di oggetti in Amazon S3nellaGuida dell'utente Amazon Simple Storage Service.

  3. Utilizza i seguenti esempi per richiamare l'operazione AnalyzeExpense.

    CLI
    aws textract analyze-expense --document '{"S3Object": {"Bucket": "bucket name","Name": "object name"}}'
    Python
    import boto3 import io from PIL import Image, ImageDraw def draw_bounding_box(key, val, width, height, draw): # If a key is Geometry, draw the bounding box info in it if "Geometry" in key: # Draw bounding box information box = val["BoundingBox"] left = width * box['Left'] top = height * box['Top'] draw.rectangle([left, top, left + (width * box['Width']), top + (height * box['Height'])], outline='black') # Takes a field as an argument and prints out the detected labels and values def print_labels_and_values(field): # Only if labels are detected and returned if "LabelDetection" in field: print("Summary Label Detection - Confidence: {}".format( str(field.get("LabelDetection")["Confidence"])) + ", " + "Summary Values: {}".format(str(field.get("LabelDetection")["Text"]))) print(field.get("LabelDetection")["Geometry"]) else: print("Label Detection - No labels returned.") if "ValueDetection" in field: print("Summary Value Detection - Confidence: {}".format( str(field.get("ValueDetection")["Confidence"])) + ", " + "Summary Values: {}".format(str(field.get("ValueDetection")["Text"]))) print(field.get("ValueDetection")["Geometry"]) else: print("Value Detection - No values returned") def process_text_detection(bucket, document): # Get the document from S3 s3_connection = boto3.resource('s3') s3_object = s3_connection.Object(bucket, document) s3_response = s3_object.get() # opening binary stream using an in-memory bytes buffer stream = io.BytesIO(s3_response['Body'].read()) # loading stream into image image = Image.open(stream) # Detect text in the document client = boto3.client('textract', region_name="us-east-1") # process using S3 object response = client.analyze_expense( Document={'S3Object': {'Bucket': bucket, 'Name': document}}) # Set width and height to display image and draw bounding boxes # Create drawing object width, height = image.size draw = ImageDraw.Draw(image) for expense_doc in response["ExpenseDocuments"]: for line_item_group in expense_doc["LineItemGroups"]: for line_items in line_item_group["LineItems"]: for expense_fields in line_items["LineItemExpenseFields"]: print_labels_and_values(expense_fields) print() print("Summary:") for summary_field in expense_doc["SummaryFields"]: print_labels_and_values(summary_field) print() #For draw bounding boxes for line_item_group in expense_doc["LineItemGroups"]: for line_items in line_item_group["LineItems"]: for expense_fields in line_items["LineItemExpenseFields"]: for key, val in expense_fields["ValueDetection"].items(): if "Geometry" in key: draw_bounding_box(key, val, width, height, draw) for label in expense_doc["SummaryFields"]: if "LabelDetection" in label: for key, val in label["LabelDetection"].items(): draw_bounding_box(key, val, width, height, draw) # Display the image image.show() def main(): bucket = 'Bucket-Name' document = 'Document-Name' process_text_detection(bucket, document) if __name__ == "__main__": main()
    Java
    package com.amazonaws.samples; import java.awt.*; import java.awt.image.BufferedImage; import java.io.ByteArrayInputStream; import java.io.IOException; import java.util.List; import java.util.concurrent.CompletableFuture; import javax.imageio.ImageIO; import javax.swing.*; import software.amazon.awssdk.auth.credentials.AwsBasicCredentials; import software.amazon.awssdk.auth.credentials.StaticCredentialsProvider; import software.amazon.awssdk.core.ResponseBytes; import software.amazon.awssdk.core.async.AsyncResponseTransformer; import software.amazon.awssdk.regions.Region; import software.amazon.awssdk.services.s3.*; import software.amazon.awssdk.services.s3.model.GetObjectRequest; import software.amazon.awssdk.services.s3.model.GetObjectResponse; import software.amazon.awssdk.services.textract.TextractClient; import software.amazon.awssdk.services.textract.model.AnalyzeExpenseRequest; import software.amazon.awssdk.services.textract.model.AnalyzeExpenseResponse; import software.amazon.awssdk.services.textract.model.BoundingBox; import software.amazon.awssdk.services.textract.model.Document; import software.amazon.awssdk.services.textract.model.ExpenseDocument; import software.amazon.awssdk.services.textract.model.ExpenseField; import software.amazon.awssdk.services.textract.model.LineItemFields; import software.amazon.awssdk.services.textract.model.LineItemGroup; import software.amazon.awssdk.services.textract.model.S3Object; import software.amazon.awssdk.services.textract.model.Point; /** * * Demo code to parse Textract AnalyzeExpense API * */ public class TextractAnalyzeExpenseSample extends JPanel { private static final long serialVersionUID = 1L; BufferedImage image; static AnalyzeExpenseResponse result; public TextractAnalyzeExpenseSample(AnalyzeExpenseResponse documentResult, BufferedImage bufImage) throws Exception { super(); result = documentResult; // Results of analyzeexpense summaryfields and lineitemgroups detection. image = bufImage; // The image containing the document. } // Draws the image and text bounding box. public void paintComponent(Graphics g) { Graphics2D g2d = (Graphics2D) g; // Create a Java2D version of g. // Draw the image. g2d.drawImage(image, 0, 0, image.getWidth(this), image.getHeight(this), this); // Iterate through summaryfields and lineitemgroups and display boundedboxes around lines of detected label and value. List<ExpenseDocument> expenseDocuments = result.expenseDocuments(); for (ExpenseDocument expenseDocument : expenseDocuments) { if (expenseDocument.hasSummaryFields()) { DisplayAnalyzeExpenseSummaryInfo(expenseDocument); List<ExpenseField> summaryfields = expenseDocument.summaryFields(); for (ExpenseField summaryfield : summaryfields) { if (summaryfield.valueDetection() != null) { ShowBoundingBox(image.getHeight(this), image.getWidth(this), summaryfield.valueDetection().geometry().boundingBox(), g2d, new Color(0, 0, 0)); } if (summaryfield.labelDetection() != null) { ShowBoundingBox(image.getHeight(this), image.getWidth(this), summaryfield.labelDetection().geometry().boundingBox(), g2d, new Color(0, 0, 0)); } } } if (expenseDocument.hasLineItemGroups()) { DisplayAnalyzeExpenseLineItemGroupsInfo(expenseDocument); List<LineItemGroup> lineitemgroups = expenseDocument.lineItemGroups(); for (LineItemGroup lineitemgroup : lineitemgroups) { if (lineitemgroup.hasLineItems()) { List<LineItemFields> lineItems = lineitemgroup.lineItems(); for (LineItemFields lineitemfield : lineItems) { if (lineitemfield.hasLineItemExpenseFields()) { List<ExpenseField> expensefields = lineitemfield.lineItemExpenseFields(); for (ExpenseField expensefield : expensefields) { if (expensefield.valueDetection() != null) { ShowBoundingBox(image.getHeight(this), image.getWidth(this), expensefield.valueDetection().geometry().boundingBox(), g2d, new Color(0, 0, 0)); } if (expensefield.labelDetection() != null) { ShowBoundingBox(image.getHeight(this), image.getWidth(this), expensefield.labelDetection().geometry().boundingBox(), g2d, new Color(0, 0, 0)); } } } } } } } } } // Show bounding box at supplied location. private void ShowBoundingBox(float imageHeight, float imageWidth, BoundingBox box, Graphics2D g2d, Color color) { float left = imageWidth * box.left(); float top = imageHeight * box.top(); // Display bounding box. g2d.setColor(color); g2d.drawRect(Math.round(left), Math.round(top), Math.round(imageWidth * box.width()), Math.round(imageHeight * box.height())); } private void ShowSelectedElement(float imageHeight, float imageWidth, BoundingBox box, Graphics2D g2d, Color color) { float left = (float) imageWidth * (float) box.left(); float top = (float) imageHeight * (float) box.top(); System.out.println(left); System.out.println(top); // Display bounding box. g2d.setColor(color); g2d.fillRect(Math.round(left), Math.round(top), Math.round(imageWidth * box.width()), Math.round(imageHeight * box.height())); } // Shows polygon at supplied location private void ShowPolygon(int imageHeight, int imageWidth, List<Point> points, Graphics2D g2d) { g2d.setColor(new Color(0, 0, 0)); Polygon polygon = new Polygon(); // Construct polygon and display for (Point point : points) { polygon.addPoint((Math.round(point.x() * imageWidth)), Math.round(point.y() * imageHeight)); } g2d.drawPolygon(polygon); } private void DisplayAnalyzeExpenseSummaryInfo(ExpenseDocument expensedocument) { System.out.println(" ExpenseId : " + expensedocument.expenseIndex()); System.out.println(" Expense Summary information:"); if (expensedocument.hasSummaryFields()) { List<ExpenseField> summaryfields = expensedocument.summaryFields(); for (ExpenseField summaryfield : summaryfields) { System.out.println(" Page: " + summaryfield.pageNumber()); if (summaryfield.type() != null) { System.out.println(" Expense Summary Field Type:" + summaryfield.type().text()); } if (summaryfield.labelDetection() != null) { System.out.println(" Expense Summary Field Label:" + summaryfield.labelDetection().text()); System.out.println(" Geometry"); System.out.println(" Bounding Box: " + summaryfield.labelDetection().geometry().boundingBox().toString()); System.out.println( " Polygon: " + summaryfield.labelDetection().geometry().polygon().toString()); } if (summaryfield.valueDetection() != null) { System.out.println(" Expense Summary Field Value:" + summaryfield.valueDetection().text()); System.out.println(" Geometry"); System.out.println(" Bounding Box: " + summaryfield.valueDetection().geometry().boundingBox().toString()); System.out.println( " Polygon: " + summaryfield.valueDetection().geometry().polygon().toString()); } } } } private void DisplayAnalyzeExpenseLineItemGroupsInfo(ExpenseDocument expensedocument) { System.out.println(" ExpenseId : " + expensedocument.expenseIndex()); System.out.println(" Expense LineItemGroups information:"); if (expensedocument.hasLineItemGroups()) { List<LineItemGroup> lineitemgroups = expensedocument.lineItemGroups(); for (LineItemGroup lineitemgroup : lineitemgroups) { System.out.println(" Expense LineItemGroupsIndexID :" + lineitemgroup.lineItemGroupIndex()); if (lineitemgroup.hasLineItems()) { List<LineItemFields> lineItems = lineitemgroup.lineItems(); for (LineItemFields lineitemfield : lineItems) { if (lineitemfield.hasLineItemExpenseFields()) { List<ExpenseField> expensefields = lineitemfield.lineItemExpenseFields(); for (ExpenseField expensefield : expensefields) { if (expensefield.type() != null) { System.out.println(" Expense LineItem Field Type:" + expensefield.type().text()); } if (expensefield.valueDetection() != null) { System.out.println( " Expense Summary Field Value:" + expensefield.valueDetection().text()); System.out.println(" Geometry"); System.out.println(" Bounding Box: " + expensefield.valueDetection().geometry().boundingBox().toString()); System.out.println(" Polygon: " + expensefield.valueDetection().geometry().polygon().toString()); } if (expensefield.labelDetection() != null) { System.out.println( " Expense LineItem Field Label:" + expensefield.labelDetection().text()); System.out.println(" Geometry"); System.out.println(" Bounding Box: " + expensefield.labelDetection().geometry().boundingBox().toString()); System.out.println(" Polygon: " + expensefield.labelDetection().geometry().polygon().toString()); } } } } } } } } public static void main(String arg[]) throws Exception { // Creates a default async client with credentials and AWS Region loaded from // the // environment S3AsyncClient client = S3AsyncClient.builder().region(Region.US_EAST_1).build(); System.out.println("Creating the S3 Client"); // Start the call to Amazon S3, not blocking to wait for the result CompletableFuture<ResponseBytes<GetObjectResponse>> responseFuture = client.getObject( GetObjectRequest.builder().bucket("textractanalyzeexpense").key("input/sample-receipt.jpg").build(), AsyncResponseTransformer.toBytes()); System.out.println("Successfully read the object"); // When future is complete (either successfully or in error), handle the // response CompletableFuture<ResponseBytes<GetObjectResponse>> operationCompleteFuture = responseFuture .whenComplete((getObjectResponse, exception) -> { if (getObjectResponse != null) { // At this point, the file my-file.out has been created with the data // from S3; let's just print the object version // Convert this into Async call and remove the below block from here and put it // outside TextractClient textractclient = TextractClient.builder().region(Region.US_EAST_1).build(); AnalyzeExpenseRequest request = AnalyzeExpenseRequest.builder() .document( Document.builder().s3Object(S3Object.builder().name("YOURObjectName") .bucket("YOURBucket").build()).build()) .build(); AnalyzeExpenseResponse result = textractclient.analyzeExpense(request); System.out.print(result.toString()); ByteArrayInputStream bais = new ByteArrayInputStream(getObjectResponse.asByteArray()); try { BufferedImage image = ImageIO.read(bais); System.out.println("Successfully read the image"); JFrame frame = new JFrame("Expense Image"); frame.setDefaultCloseOperation(JFrame.EXIT_ON_CLOSE); TextractAnalyzeExpense panel = new TextractAnalyzeExpense(result, image); panel.setPreferredSize(new Dimension(image.getWidth(), image.getHeight())); frame.setContentPane(panel); frame.pack(); frame.setVisible(true); } catch (IOException e) { throw new RuntimeException(e); } catch (Exception e) { // TODO Auto-generated catch block e.printStackTrace(); } } else { // Handle the error exception.printStackTrace(); } }); // We could do other work while waiting for the AWS call to complete in // the background, but we'll just wait for "whenComplete" to finish instead operationCompleteFuture.join(); } }
    Node.Js
    // Import required AWS SDK clients and commands for Node.js import { AnalyzeExpenseCommand } from "@aws-sdk/client-textract"; import { TextractClient } from "@aws-sdk/client-textract"; // Set the AWS Region. const REGION = "region"; //e.g. "us-east-1" // Create SNS service object. const textractClient = new TextractClient({ region: REGION }); const bucket = 'bucket' const photo = 'photo' // Set params const params = { Document: { S3Object: { Bucket: bucket, Name: photo }, }, } const process_text_detection = async () => { try { const aExpense = new AnalyzeExpenseCommand(params); const response = await textractClient.send(aExpense); //console.log(response) response.ExpenseDocuments.forEach(doc => { doc.LineItemGroups.forEach(items => { items.LineItems.forEach(fields => { fields.LineItemExpenseFields.forEach(expenseFields =>{ console.log(expenseFields) }) } )} ) } ) return response; // For unit tests. } catch (err) { console.log("Error", err); } } process_text_detection()
  4. Questo ti fornirà l'output JSON per ilAnalyzeExpenseoperazione.