4

I'm using the "TEXT_DETECTION" option from the Google Cloud Vision API to OCR some images.

The bounding box around individual characters is sometimes accurate and sometimes not, often within the same image.

Is this a normal side-effect of a probabilistic nature of the vision algorithm, a bug in the Vision API, or of course an issue with how I'm interpreting the response?

Image annotated with text and bounding boxes from Google Vision OCR API

The letter "a" with poor bounding box

Here's the portion of the response specific to the letter "a" from which I'm extracting the bounding box.

stdClass Object
(
    [property] => stdClass Object
        (
            [detectedLanguages] => Array
                (
                    [0] => stdClass Object
                        (
                            [languageCode] => en
                        )

                )

        )

    [boundingBox] => stdClass Object
        (
            [vertices] => Array
                (
                    [0] => stdClass Object
                        (
                            [x] => 419
                            [y] => 304
                        )

                    [1] => stdClass Object
                        (
                            [x] => 479
                            [y] => 304
                        )

                    [2] => stdClass Object
                        (
                            [x] => 479
                            [y] => 397
                        )

                    [3] => stdClass Object
                        (
                            [x] => 419
                            [y] => 397
                        )

                )

        )

    [text] => a
)
0

Here you can compare the output of Google vs Azure vs OCR.space.. maybe the other ones work better for your purpose? (but I doubt it)

Is this a normal side-effect of a probabilistic nature of the vision algorithm, a bug in the Vision API,

From my testing, all OCR services show the same issue as of today, sometimes they fail to detect perfectly fine letters or words (while detecting similar words in the same image just fine).

  • Tim. thanks for your response and the link, which should be useful. However, my question was about the bounding boxes around letters, not about the detection rates or accuracy. – Mark Bench Sep 18 '17 at 16:37

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.