Running List of Questions

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We are developing a running list of questions as we work on our C17th Secretarial Hand Ground Truth

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Question One


What does a sensible division of a page into Text Regions look like?

Question One: Is this a sensible division of this page into Text Regions?



Question Two


Is it best practice to avoid overlapping Text Regions by using irregular shapes? Or, is it better to keep rectangular shapes, aligned horizontally with image, and to accept overlapping Text Regions?



Question Three


How can we train the Transkribus automatic layout tools to understand the range of document structures we have?

Typical structure and variations

HCA depositions are typically structured with three implied columns of text. Depositions can be as short as a quarter of an image page, or as long as ten image pages.

Most HCA deposition image pages have an implied three column structure.

At the start of a deposition, there may be a date, which is usually in the central column. There is then the long or short form name of the cause, which is usually in the left hand column. At the same horizontal level, or somewhat lower follows the full name of the individual being examined (the deponent), together with their residential location, their occupation and age. These data, which we for convenience call the "Personal Front matter" typically runs across the central and right hand column.

The main body of the deposition (answers to an allegation or libel, or to interrogatories) is in the centre and right of a page.

At the same horizontal level as the main body of the deposition, there may be additional data in the left hand column. For example, merchant markes (typically these are pictograms), referred to in the main body.

At the foot of the main body of a deposition, there is a signature, mark or initial(s) (which we describe together as "Signoffs") of the person being examined. This may be can be in the central column, the right hand column, or running over both the central and right hand columns.

Near the horizonal level of the signoff, there is usually some legal boilerplate in the left hand column.

Human reading of our documents

Human beings read legal depositions by starting in the top left hand side of a page, then moving their eyes to the first block of text on the left and then the right, in a zig zag

Machine reading of layout

Can we manually teach programme an automatic layout recogniser to look for certain types of Text Region (by size and shape and amount of text) and to number the Text Regions detected in a bespoke order

For example:

    Always look to the top right hand corner of a page, if the page is a recto page
    If no page number in top right hand corner, look for pencil page number elsewhere at the top of the page
    Look for single leads detached from other text blocks and create Text Region
    Always create a Text Region if a certain minimum of non-text surrounds the text
    Recognise curly brackets and always place text which has curly brackets on the right of it within a discrete Text Region
    Work in a Zig Zag from top RH corner of a page with the Text Rehions numbered according to their presence (or not) on that Zig Zag pattern?


Can we as an alternative start by hand defining all teh Text Regions we want on a given page and THEN running the automatic layout recognition, with the recognition program identifying only base lines, and assigning them to our manually chosen Text Regions?


Question Four


How should we chose the best range of documents to include in our Ground Truth?

Should we chose a wide range of handwriting types under the umbrella of "Notarial Secretary Hand?

Should we chose only well lit, high quality images, or is there an argument to include images in diverse lighting conditions and different degrees of focal accuracy?

How sensitive is the machine learning process (and the subsequent accuracy of an HTR model) to very accurately defined base lines, versus very accurately transcribed text?

How does the machine learning process treat text in the Ground Truth which is either blacked out (no text visible) or struck out (but where the text is still visible)?

Is it important to have plenty of examples of interlineation and marginalia to train an HTR model to be flexible, or do these actually reduce the accuracy of an HTR model?



Question Five


How should signatures be treated?

Should signatures be in their own Text Region, or should they be included in the Text Region which contains the main text with which they are associated?



Question Six


How should pictograms containing some text be treated?

English High Court of Admiralty depositions often contain Merchants Marks, which are essentially pictograms. These pictograms sometimes include letters, numbers or words. How should these be treated im terms of Text Region and base lines?