您可以使用 Firebase ML 识别图片中的文本。Firebase ML 既有可用于识别图片中的文本(例如街道标志的文本)的通用 API,也有针对识别文档文本而优化的 API。
准备工作
- 将 Firebase 添加到您的 Android 项目(如果尚未添加)。
-
在您的模块(应用级)Gradle 文件(通常是
<project>/<app-module>/build.gradle.kts
或<project>/<app-module>/build.gradle
)中,添加 Firebase ML Vision Android 库的依赖项。我们建议使用 Firebase Android BoM 来实现库版本控制。dependencies { // Import the BoM for the Firebase platform implementation(platform("com.google.firebase:firebase-bom:32.5.0")) // Add the dependency for the Firebase ML Vision library // When using the BoM, you don't specify versions in Firebase library dependencies implementation 'com.google.firebase:firebase-ml-vision' }
借助 Firebase Android BoM,可确保您的应用使用的始终是 Firebase Android 库的兼容版本。
(替代方法) 在不使用 BoM 的情况下添加 Firebase 库依赖项
如果您选择不使用 Firebase BoM,则必须在每个 Firebase 库的依赖项行中指定相应的库版本。
请注意,如果您在应用中使用多个 Firebase 库,我们强烈建议您使用 BoM 来管理库版本,从而确保所有版本都兼容。
dependencies { // Add the dependency for the Firebase ML Vision library // When NOT using the BoM, you must specify versions in Firebase library dependencies implementation 'com.google.firebase:firebase-ml-vision:24.1.0' }
-
如果您尚未为项目启用基于 Cloud 的 API,请立即按照以下步骤启用:
- 打开 Firebase 控制台的 Firebase ML API 页面。
-
如果您尚未将项目升级到 Blaze 定价方案,请点击升级以执行此操作。(只有在您的项目未采用 Blaze 方案时,系统才会提示您进行升级。)
只有 Blaze 级项目才能使用基于 Cloud 的 API。
- 如果尚未启用基于 Cloud 的 API,请点击启用基于 Cloud 的 API。
现在,您可以开始识别图片中的文本了。
输入图片指南
-
为了使 Firebase ML 准确识别文本,输入图片必须包含由足够像素数据表示的文本。理想情况下,对于拉丁文本,每个字符应至少为 16x16 像素。对于中文、日文和韩文文本,每个字符应为 24x24 像素。对于所有语言,字符像素大于 24x24 通常不会增加准确性。
例如,640x480 像素的图片可能非常适合用于扫描占据图片整个宽度的名片。如需扫描打印在信纸大小纸张上的文档,可能需要 720x1280 像素的图片。
-
图片聚焦不佳会影响文本识别的准确性。如果您无法获得满意的结果,请尝试让用户重新采集图片。
识别图片中的文本
如需识别图片中的文本,请按照以下说明运行文本识别器。
1.运行文本识别器
如需识别图片中的文本,请基于设备上的以下资源创建一个FirebaseVisionImage
对象:Bitmap
、media.Image
、ByteBuffer
、字节数组或文件。然后,将 FirebaseVisionImage
对象传递给 FirebaseVisionTextRecognizer
的 processImage
方法。
基于图片创建
FirebaseVisionImage
对象。-
如需基于
media.Image
对象创建FirebaseVisionImage
对象(例如从设备的相机捕获图片时),请将media.Image
对象和图片的旋转角度传递给FirebaseVisionImage.fromMediaImage()
。如果您使用了 CameraX 库,
OnImageCapturedListener
和ImageAnalysis.Analyzer
类会为您计算旋转角度值,因此您只需在调用FirebaseVisionImage.fromMediaImage()
之前将旋转角度转换为 Firebase ML 的ROTATION_
常量:Kotlin+KTX
private class YourImageAnalyzer : ImageAnalysis.Analyzer { private fun degreesToFirebaseRotation(degrees: Int): Int = when(degrees) { 0 -> FirebaseVisionImageMetadata.ROTATION_0 90 -> FirebaseVisionImageMetadata.ROTATION_90 180 -> FirebaseVisionImageMetadata.ROTATION_180 270 -> FirebaseVisionImageMetadata.ROTATION_270 else -> throw Exception("Rotation must be 0, 90, 180, or 270.") } override fun analyze(imageProxy: ImageProxy?, degrees: Int) { val mediaImage = imageProxy?.image val imageRotation = degreesToFirebaseRotation(degrees) if (mediaImage != null) { val image = FirebaseVisionImage.fromMediaImage(mediaImage, imageRotation) // Pass image to an ML Vision API // ... } } }
Java
private class YourAnalyzer implements ImageAnalysis.Analyzer { private int degreesToFirebaseRotation(int degrees) { switch (degrees) { case 0: return FirebaseVisionImageMetadata.ROTATION_0; case 90: return FirebaseVisionImageMetadata.ROTATION_90; case 180: return FirebaseVisionImageMetadata.ROTATION_180; case 270: return FirebaseVisionImageMetadata.ROTATION_270; default: throw new IllegalArgumentException( "Rotation must be 0, 90, 180, or 270."); } } @Override public void analyze(ImageProxy imageProxy, int degrees) { if (imageProxy == null || imageProxy.getImage() == null) { return; } Image mediaImage = imageProxy.getImage(); int rotation = degreesToFirebaseRotation(degrees); FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation); // Pass image to an ML Vision API // ... } }
如果您没有使用可提供图片旋转角度的相机库,可以根据设备的旋转角度和设备中相机传感器的朝向来计算旋转角度:
Kotlin+KTX
private val ORIENTATIONS = SparseIntArray() init { ORIENTATIONS.append(Surface.ROTATION_0, 90) ORIENTATIONS.append(Surface.ROTATION_90, 0) ORIENTATIONS.append(Surface.ROTATION_180, 270) ORIENTATIONS.append(Surface.ROTATION_270, 180) } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) @Throws(CameraAccessException::class) private fun getRotationCompensation(cameraId: String, activity: Activity, context: Context): Int { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. val deviceRotation = activity.windowManager.defaultDisplay.rotation var rotationCompensation = ORIENTATIONS.get(deviceRotation) // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. val cameraManager = context.getSystemService(CAMERA_SERVICE) as CameraManager val sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION)!! rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360 // Return the corresponding FirebaseVisionImageMetadata rotation value. val result: Int when (rotationCompensation) { 0 -> result = FirebaseVisionImageMetadata.ROTATION_0 90 -> result = FirebaseVisionImageMetadata.ROTATION_90 180 -> result = FirebaseVisionImageMetadata.ROTATION_180 270 -> result = FirebaseVisionImageMetadata.ROTATION_270 else -> { result = FirebaseVisionImageMetadata.ROTATION_0 Log.e(TAG, "Bad rotation value: $rotationCompensation") } } return result }
Java
private static final SparseIntArray ORIENTATIONS = new SparseIntArray(); static { ORIENTATIONS.append(Surface.ROTATION_0, 90); ORIENTATIONS.append(Surface.ROTATION_90, 0); ORIENTATIONS.append(Surface.ROTATION_180, 270); ORIENTATIONS.append(Surface.ROTATION_270, 180); } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) private int getRotationCompensation(String cameraId, Activity activity, Context context) throws CameraAccessException { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. int deviceRotation = activity.getWindowManager().getDefaultDisplay().getRotation(); int rotationCompensation = ORIENTATIONS.get(deviceRotation); // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. CameraManager cameraManager = (CameraManager) context.getSystemService(CAMERA_SERVICE); int sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION); rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360; // Return the corresponding FirebaseVisionImageMetadata rotation value. int result; switch (rotationCompensation) { case 0: result = FirebaseVisionImageMetadata.ROTATION_0; break; case 90: result = FirebaseVisionImageMetadata.ROTATION_90; break; case 180: result = FirebaseVisionImageMetadata.ROTATION_180; break; case 270: result = FirebaseVisionImageMetadata.ROTATION_270; break; default: result = FirebaseVisionImageMetadata.ROTATION_0; Log.e(TAG, "Bad rotation value: " + rotationCompensation); } return result; }
然后,将
media.Image
对象及旋转角度值传递给FirebaseVisionImage.fromMediaImage()
:Kotlin+KTX
val image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation);
- 如需基于文件 URI 创建
FirebaseVisionImage
对象,请将应用上下文和文件 URI 传递给FirebaseVisionImage.fromFilePath()
。如果您使用ACTION_GET_CONTENT
Intent 提示用户从图库应用中选择图片,这一操作会非常有用。Kotlin+KTX
val image: FirebaseVisionImage try { image = FirebaseVisionImage.fromFilePath(context, uri) } catch (e: IOException) { e.printStackTrace() }
Java
FirebaseVisionImage image; try { image = FirebaseVisionImage.fromFilePath(context, uri); } catch (IOException e) { e.printStackTrace(); }
- 如需基于
ByteBuffer
或字节数组创建FirebaseVisionImage
对象,请先按上述media.Image
输入的说明计算图片旋转角度。然后,创建一个包含图片的高度、宽度、颜色编码格式和旋转角度的
FirebaseVisionImageMetadata
对象:Kotlin+KTX
val metadata = FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build()
Java
FirebaseVisionImageMetadata metadata = new FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build();
使用缓冲区或数组以及元数据对象来创建
FirebaseVisionImage
对象:Kotlin+KTX
val image = FirebaseVisionImage.fromByteBuffer(buffer, metadata) // Or: val image = FirebaseVisionImage.fromByteArray(byteArray, metadata)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromByteBuffer(buffer, metadata); // Or: FirebaseVisionImage image = FirebaseVisionImage.fromByteArray(byteArray, metadata);
- 如需基于
Bitmap
对象创建FirebaseVisionImage
对象,请运行以下代码:Kotlin+KTX
val image = FirebaseVisionImage.fromBitmap(bitmap)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromBitmap(bitmap);
Bitmap
对象表示的图片必须保持竖直,不需要额外的旋转。
-
获取
FirebaseVisionTextRecognizer
实例。Kotlin+KTX
val detector = FirebaseVision.getInstance().cloudTextRecognizer // Or, to change the default settings: // val detector = FirebaseVision.getInstance().getCloudTextRecognizer(options)
// Or, to provide language hints to assist with language detection: // See https://cloud.google.com/vision/docs/languages for supported languages val options = FirebaseVisionCloudTextRecognizerOptions.Builder() .setLanguageHints(listOf("en", "hi")) .build()
Java
FirebaseVisionTextRecognizer detector = FirebaseVision.getInstance() .getCloudTextRecognizer(); // Or, to change the default settings: // FirebaseVisionTextRecognizer detector = FirebaseVision.getInstance() // .getCloudTextRecognizer(options);
// Or, to provide language hints to assist with language detection: // See https://cloud.google.com/vision/docs/languages for supported languages FirebaseVisionCloudTextRecognizerOptions options = new FirebaseVisionCloudTextRecognizerOptions.Builder() .setLanguageHints(Arrays.asList("en", "hi")) .build();
最后,将图片传递给
processImage
方法:Kotlin+KTX
val result = detector.processImage(image) .addOnSuccessListener { firebaseVisionText -> // Task completed successfully // ... } .addOnFailureListener { e -> // Task failed with an exception // ... }
Java
Task<FirebaseVisionText> result = detector.processImage(image) .addOnSuccessListener(new OnSuccessListener<FirebaseVisionText>() { @Override public void onSuccess(FirebaseVisionText firebaseVisionText) { // Task completed successfully // ... } }) .addOnFailureListener( new OnFailureListener() { @Override public void onFailure(@NonNull Exception e) { // Task failed with an exception // ... } });
2. 从识别出的文本块中提取文本
如果文本识别操作成功完成,系统会向成功监听器传递一个FirebaseVisionText
对象。FirebaseVisionText
对象包含图片中识别到的完整文本以及零个或零个以上的 TextBlock
对象。
每个 TextBlock
表示一个矩形文本块,其中包含零个或零个以上的 Line
对象。每个 Line
对象包含零个或零个以上的 Element
对象,这些对象表示字词和类似字词的实体(日期、数字等)。
对于每个 TextBlock
、Line
和 Element
对象,您可以获取区域中识别出的文本以及该区域的边界坐标。
例如:
Kotlin+KTX
val resultText = result.text for (block in result.textBlocks) { val blockText = block.text val blockConfidence = block.confidence val blockLanguages = block.recognizedLanguages val blockCornerPoints = block.cornerPoints val blockFrame = block.boundingBox for (line in block.lines) { val lineText = line.text val lineConfidence = line.confidence val lineLanguages = line.recognizedLanguages val lineCornerPoints = line.cornerPoints val lineFrame = line.boundingBox for (element in line.elements) { val elementText = element.text val elementConfidence = element.confidence val elementLanguages = element.recognizedLanguages val elementCornerPoints = element.cornerPoints val elementFrame = element.boundingBox } } }
Java
String resultText = result.getText(); for (FirebaseVisionText.TextBlock block: result.getTextBlocks()) { String blockText = block.getText(); Float blockConfidence = block.getConfidence(); List<RecognizedLanguage> blockLanguages = block.getRecognizedLanguages(); Point[] blockCornerPoints = block.getCornerPoints(); Rect blockFrame = block.getBoundingBox(); for (FirebaseVisionText.Line line: block.getLines()) { String lineText = line.getText(); Float lineConfidence = line.getConfidence(); List<RecognizedLanguage> lineLanguages = line.getRecognizedLanguages(); Point[] lineCornerPoints = line.getCornerPoints(); Rect lineFrame = line.getBoundingBox(); for (FirebaseVisionText.Element element: line.getElements()) { String elementText = element.getText(); Float elementConfidence = element.getConfidence(); List<RecognizedLanguage> elementLanguages = element.getRecognizedLanguages(); Point[] elementCornerPoints = element.getCornerPoints(); Rect elementFrame = element.getBoundingBox(); } } }
后续步骤
- 在向生产环境中部署使用 Cloud API 的应用之前,您应该执行一些额外的步骤来防止未经授权的 API 访问并减轻这些访问造成的影响。
识别文档图片中的文本
如需识别文档的文本,请按照以下说明配置并运行文档文本识别器。
下文所述的文档文本识别 API 提供了一个可以更方便地处理文档图片的接口。如果您希望使用 FirebaseVisionTextRecognizer
API 提供的接口,可以将云端文本识别器配置为使用密集文本模型,以改用该接口来扫描文档。
如需使用文档文本识别 API,请执行以下操作:
1. 运行文本识别器
如需识别图片中的文本,请从设备上的以下资源创建一个FirebaseVisionImage
对象:Bitmap
、media.Image
、ByteBuffer
、字节数组或文件。然后,将 FirebaseVisionImage
对象传递给 FirebaseVisionDocumentTextRecognizer
的 processImage
方法。
基于图片创建
FirebaseVisionImage
对象。-
如需基于
media.Image
对象创建FirebaseVisionImage
对象(例如从设备的相机捕获图片时),请将media.Image
对象和图片的旋转角度传递给FirebaseVisionImage.fromMediaImage()
。如果您使用了 CameraX 库,
OnImageCapturedListener
和ImageAnalysis.Analyzer
类会为您计算旋转角度值,因此您只需在调用FirebaseVisionImage.fromMediaImage()
之前将旋转角度转换为 Firebase ML 的ROTATION_
常量:Kotlin+KTX
private class YourImageAnalyzer : ImageAnalysis.Analyzer { private fun degreesToFirebaseRotation(degrees: Int): Int = when(degrees) { 0 -> FirebaseVisionImageMetadata.ROTATION_0 90 -> FirebaseVisionImageMetadata.ROTATION_90 180 -> FirebaseVisionImageMetadata.ROTATION_180 270 -> FirebaseVisionImageMetadata.ROTATION_270 else -> throw Exception("Rotation must be 0, 90, 180, or 270.") } override fun analyze(imageProxy: ImageProxy?, degrees: Int) { val mediaImage = imageProxy?.image val imageRotation = degreesToFirebaseRotation(degrees) if (mediaImage != null) { val image = FirebaseVisionImage.fromMediaImage(mediaImage, imageRotation) // Pass image to an ML Vision API // ... } } }
Java
private class YourAnalyzer implements ImageAnalysis.Analyzer { private int degreesToFirebaseRotation(int degrees) { switch (degrees) { case 0: return FirebaseVisionImageMetadata.ROTATION_0; case 90: return FirebaseVisionImageMetadata.ROTATION_90; case 180: return FirebaseVisionImageMetadata.ROTATION_180; case 270: return FirebaseVisionImageMetadata.ROTATION_270; default: throw new IllegalArgumentException( "Rotation must be 0, 90, 180, or 270."); } } @Override public void analyze(ImageProxy imageProxy, int degrees) { if (imageProxy == null || imageProxy.getImage() == null) { return; } Image mediaImage = imageProxy.getImage(); int rotation = degreesToFirebaseRotation(degrees); FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation); // Pass image to an ML Vision API // ... } }
如果您没有使用可提供图片旋转角度的相机库,可以根据设备的旋转角度和设备中相机传感器的朝向来计算旋转角度:
Kotlin+KTX
private val ORIENTATIONS = SparseIntArray() init { ORIENTATIONS.append(Surface.ROTATION_0, 90) ORIENTATIONS.append(Surface.ROTATION_90, 0) ORIENTATIONS.append(Surface.ROTATION_180, 270) ORIENTATIONS.append(Surface.ROTATION_270, 180) } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) @Throws(CameraAccessException::class) private fun getRotationCompensation(cameraId: String, activity: Activity, context: Context): Int { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. val deviceRotation = activity.windowManager.defaultDisplay.rotation var rotationCompensation = ORIENTATIONS.get(deviceRotation) // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. val cameraManager = context.getSystemService(CAMERA_SERVICE) as CameraManager val sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION)!! rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360 // Return the corresponding FirebaseVisionImageMetadata rotation value. val result: Int when (rotationCompensation) { 0 -> result = FirebaseVisionImageMetadata.ROTATION_0 90 -> result = FirebaseVisionImageMetadata.ROTATION_90 180 -> result = FirebaseVisionImageMetadata.ROTATION_180 270 -> result = FirebaseVisionImageMetadata.ROTATION_270 else -> { result = FirebaseVisionImageMetadata.ROTATION_0 Log.e(TAG, "Bad rotation value: $rotationCompensation") } } return result }
Java
private static final SparseIntArray ORIENTATIONS = new SparseIntArray(); static { ORIENTATIONS.append(Surface.ROTATION_0, 90); ORIENTATIONS.append(Surface.ROTATION_90, 0); ORIENTATIONS.append(Surface.ROTATION_180, 270); ORIENTATIONS.append(Surface.ROTATION_270, 180); } /** * Get the angle by which an image must be rotated given the device's current * orientation. */ @RequiresApi(api = Build.VERSION_CODES.LOLLIPOP) private int getRotationCompensation(String cameraId, Activity activity, Context context) throws CameraAccessException { // Get the device's current rotation relative to its "native" orientation. // Then, from the ORIENTATIONS table, look up the angle the image must be // rotated to compensate for the device's rotation. int deviceRotation = activity.getWindowManager().getDefaultDisplay().getRotation(); int rotationCompensation = ORIENTATIONS.get(deviceRotation); // On most devices, the sensor orientation is 90 degrees, but for some // devices it is 270 degrees. For devices with a sensor orientation of // 270, rotate the image an additional 180 ((270 + 270) % 360) degrees. CameraManager cameraManager = (CameraManager) context.getSystemService(CAMERA_SERVICE); int sensorOrientation = cameraManager .getCameraCharacteristics(cameraId) .get(CameraCharacteristics.SENSOR_ORIENTATION); rotationCompensation = (rotationCompensation + sensorOrientation + 270) % 360; // Return the corresponding FirebaseVisionImageMetadata rotation value. int result; switch (rotationCompensation) { case 0: result = FirebaseVisionImageMetadata.ROTATION_0; break; case 90: result = FirebaseVisionImageMetadata.ROTATION_90; break; case 180: result = FirebaseVisionImageMetadata.ROTATION_180; break; case 270: result = FirebaseVisionImageMetadata.ROTATION_270; break; default: result = FirebaseVisionImageMetadata.ROTATION_0; Log.e(TAG, "Bad rotation value: " + rotationCompensation); } return result; }
然后,将
media.Image
对象及旋转角度值传递给FirebaseVisionImage.fromMediaImage()
:Kotlin+KTX
val image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromMediaImage(mediaImage, rotation);
- 如需基于文件 URI 创建
FirebaseVisionImage
对象,请将应用上下文和文件 URI 传递给FirebaseVisionImage.fromFilePath()
。如果您使用ACTION_GET_CONTENT
Intent 提示用户从图库应用中选择图片,这一操作会非常有用。Kotlin+KTX
val image: FirebaseVisionImage try { image = FirebaseVisionImage.fromFilePath(context, uri) } catch (e: IOException) { e.printStackTrace() }
Java
FirebaseVisionImage image; try { image = FirebaseVisionImage.fromFilePath(context, uri); } catch (IOException e) { e.printStackTrace(); }
- 如需基于
ByteBuffer
或字节数组创建FirebaseVisionImage
对象,请先按上述media.Image
输入的说明计算图片旋转角度。然后,创建一个包含图片的高度、宽度、颜色编码格式和旋转角度的
FirebaseVisionImageMetadata
对象:Kotlin+KTX
val metadata = FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build()
Java
FirebaseVisionImageMetadata metadata = new FirebaseVisionImageMetadata.Builder() .setWidth(480) // 480x360 is typically sufficient for .setHeight(360) // image recognition .setFormat(FirebaseVisionImageMetadata.IMAGE_FORMAT_NV21) .setRotation(rotation) .build();
使用缓冲区或数组以及元数据对象来创建
FirebaseVisionImage
对象:Kotlin+KTX
val image = FirebaseVisionImage.fromByteBuffer(buffer, metadata) // Or: val image = FirebaseVisionImage.fromByteArray(byteArray, metadata)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromByteBuffer(buffer, metadata); // Or: FirebaseVisionImage image = FirebaseVisionImage.fromByteArray(byteArray, metadata);
- 如需基于
Bitmap
对象创建FirebaseVisionImage
对象,请运行以下代码:Kotlin+KTX
val image = FirebaseVisionImage.fromBitmap(bitmap)
Java
FirebaseVisionImage image = FirebaseVisionImage.fromBitmap(bitmap);
Bitmap
对象表示的图片必须保持竖直,不需要额外的旋转。
-
获取
FirebaseVisionDocumentTextRecognizer
实例:Kotlin+KTX
val detector = FirebaseVision.getInstance() .cloudDocumentTextRecognizer
// Or, to provide language hints to assist with language detection: // See https://cloud.google.com/vision/docs/languages for supported languages val options = FirebaseVisionCloudDocumentRecognizerOptions.Builder() .setLanguageHints(listOf("en", "hi")) .build() val detector = FirebaseVision.getInstance() .getCloudDocumentTextRecognizer(options)
Java
FirebaseVisionDocumentTextRecognizer detector = FirebaseVision.getInstance() .getCloudDocumentTextRecognizer();
// Or, to provide language hints to assist with language detection: // See https://cloud.google.com/vision/docs/languages for supported languages FirebaseVisionCloudDocumentRecognizerOptions options = new FirebaseVisionCloudDocumentRecognizerOptions.Builder() .setLanguageHints(Arrays.asList("en", "hi")) .build(); FirebaseVisionDocumentTextRecognizer detector = FirebaseVision.getInstance() .getCloudDocumentTextRecognizer(options);
最后,将图片传递给
processImage
方法:Kotlin+KTX
detector.processImage(myImage) .addOnSuccessListener { firebaseVisionDocumentText -> // Task completed successfully // ... } .addOnFailureListener { e -> // Task failed with an exception // ... }
Java
detector.processImage(myImage) .addOnSuccessListener(new OnSuccessListener<FirebaseVisionDocumentText>() { @Override public void onSuccess(FirebaseVisionDocumentText result) { // Task completed successfully // ... } }) .addOnFailureListener(new OnFailureListener() { @Override public void onFailure(@NonNull Exception e) { // Task failed with an exception // ... } });
2. 从识别出的文本块中提取文本
如果文本识别操作成功完成,它将返回一个 FirebaseVisionDocumentText
对象。FirebaseVisionDocumentText
对象包含图片中识别到的完整文本以及反映所识别的文档结构的对象层次结构:
FirebaseVisionDocumentText.Block
FirebaseVisionDocumentText.Paragraph
FirebaseVisionDocumentText.Word
FirebaseVisionDocumentText.Symbol
对于每个 Block
、Paragraph
、Word
和 Symbol
对象,您可以获取区域中识别出的文本以及该区域的边界坐标。
例如:
Kotlin+KTX
val resultText = result.text for (block in result.blocks) { val blockText = block.text val blockConfidence = block.confidence val blockRecognizedLanguages = block.recognizedLanguages val blockFrame = block.boundingBox for (paragraph in block.paragraphs) { val paragraphText = paragraph.text val paragraphConfidence = paragraph.confidence val paragraphRecognizedLanguages = paragraph.recognizedLanguages val paragraphFrame = paragraph.boundingBox for (word in paragraph.words) { val wordText = word.text val wordConfidence = word.confidence val wordRecognizedLanguages = word.recognizedLanguages val wordFrame = word.boundingBox for (symbol in word.symbols) { val symbolText = symbol.text val symbolConfidence = symbol.confidence val symbolRecognizedLanguages = symbol.recognizedLanguages val symbolFrame = symbol.boundingBox } } } }
Java
String resultText = result.getText(); for (FirebaseVisionDocumentText.Block block: result.getBlocks()) { String blockText = block.getText(); Float blockConfidence = block.getConfidence(); List<RecognizedLanguage> blockRecognizedLanguages = block.getRecognizedLanguages(); Rect blockFrame = block.getBoundingBox(); for (FirebaseVisionDocumentText.Paragraph paragraph: block.getParagraphs()) { String paragraphText = paragraph.getText(); Float paragraphConfidence = paragraph.getConfidence(); List<RecognizedLanguage> paragraphRecognizedLanguages = paragraph.getRecognizedLanguages(); Rect paragraphFrame = paragraph.getBoundingBox(); for (FirebaseVisionDocumentText.Word word: paragraph.getWords()) { String wordText = word.getText(); Float wordConfidence = word.getConfidence(); List<RecognizedLanguage> wordRecognizedLanguages = word.getRecognizedLanguages(); Rect wordFrame = word.getBoundingBox(); for (FirebaseVisionDocumentText.Symbol symbol: word.getSymbols()) { String symbolText = symbol.getText(); Float symbolConfidence = symbol.getConfidence(); List<RecognizedLanguage> symbolRecognizedLanguages = symbol.getRecognizedLanguages(); Rect symbolFrame = symbol.getBoundingBox(); } } } }
后续步骤
- 在向生产环境中部署使用 Cloud API 的应用之前,您应该执行一些额外的步骤来防止未经授权的 API 访问并减轻这些访问造成的影响。