🚧 dinglehopper: Display segment id when hovering over a character difference

pull/38/head
Gerber, Mike 4 years ago
parent 1f6538b44c
commit 48ad340428

@ -15,6 +15,10 @@ def character_error_rate_n(reference, compared) -> Tuple[float, int]:
:return: character error rate and length of the reference
"""
d = distance(reference, compared)
# XXX
from .cli import ExtractedText
if isinstance(reference, ExtractedText):
reference = reference.text
n = len(list(grapheme_clusters(unicodedata.normalize('NFC', reference))))
if d == 0:

@ -8,11 +8,11 @@ from markupsafe import escape
from qurator.dinglehopper import *
def gen_diff_report(gt_things, ocr_things, css_prefix, joiner, none, align):
def gen_diff_report(gt_in, ocr_in, css_prefix, joiner, none):
gtx = ''
ocrx = ''
def format_thing(t, css_classes=None):
def format_thing(t, css_classes=None, id_=None):
if t is None:
html_t = none
css_classes += ' ellipsis'
@ -21,19 +21,52 @@ def gen_diff_report(gt_things, ocr_things, css_prefix, joiner, none, align):
else:
html_t = escape(t)
html_custom_attrs = ""
# XXX must sanitize id_ or do we trust the XML?
if id_:
html_custom_attrs = 'data-segment-id="{}"'.format(id_)
if css_classes:
return '<span class="{css_classes}">{html_t}</span>'.format(css_classes=css_classes, html_t=html_t)
return '<span class="{css_classes}" {html_custom_attrs}>{html_t}</span>'.format(css_classes=css_classes, html_t=html_t, html_custom_attrs=html_custom_attrs)
else:
return '{html_t}'.format(html_t=html_t)
for k, (g, o) in enumerate(align(gt_things, ocr_things)):
if g == o:
css_classes = None
else:
if isinstance(gt_in, ExtractedText):
print(gt_in.text)
if not isinstance(ocr_in, ExtractedText):
raise TypeError()
# XXX splitting should be done in ExtractedText
gt_things = list(grapheme_clusters(gt_in.text))
ocr_things = list(grapheme_clusters(ocr_in.text))
else:
gt_things = gt_in
ocr_things = ocr_in
g_pos = 0
o_pos = 0
for k, (g, o) in enumerate(seq_align(gt_things, ocr_things)):
css_classes = None
gt_id = None
ocr_id = None
if g != o:
css_classes = '{css_prefix}diff{k} diff'.format(css_prefix=css_prefix, k=k)
if isinstance(gt_in, ExtractedText):
gt_id = gt_in.segment_id_for_pos(g_pos) if g is not None else None
ocr_id = ocr_in.segment_id_for_pos(o_pos) if o is not None else None
# XXX note that deletions and inserts only produce one id + None, UI must
# support this, i.e. display for the one id produced
# XXX otherwise, it should always display for BOTH ids
gtx += joiner + format_thing(g, css_classes, gt_id)
ocrx += joiner + format_thing(o, css_classes, ocr_id)
if g is not None:
g_pos += len(g)
if o is not None:
o_pos += len(o)
gtx += joiner + format_thing(g, css_classes)
ocrx += joiner + format_thing(o, css_classes)
return \
'''
@ -51,20 +84,21 @@ def process(gt, ocr, report_prefix, *, metrics=True):
Click on a wrapper.
"""
gt_text = text(gt)
ocr_text = text(ocr)
gt_text = extract(gt)
ocr_text = extract(ocr)
gt_text = substitute_equivalences(gt_text)
ocr_text = substitute_equivalences(ocr_text)
# FIXME
#gt_text = substitute_equivalences(gt_text)
#ocr_text = substitute_equivalences(ocr_text)
cer, n_characters = character_error_rate_n(gt_text, ocr_text)
wer, n_words = word_error_rate_n(gt_text, ocr_text)
char_diff_report = gen_diff_report(gt_text, ocr_text, css_prefix='c', joiner='', none='·', align=align)
char_diff_report = gen_diff_report(gt_text, ocr_text, css_prefix='c', joiner='', none='·')
gt_words = words_normalized(gt_text)
ocr_words = words_normalized(ocr_text)
word_diff_report = gen_diff_report(gt_words, ocr_words, css_prefix='w', joiner=' ', none='', align=seq_align)
word_diff_report = gen_diff_report(gt_words, ocr_words, css_prefix='w', joiner=' ', none='')
def json_float(value):
"""Convert a float value to an JSON float.

@ -8,6 +8,7 @@ import numpy as np
from uniseg.graphemecluster import grapheme_clusters
def levenshtein_matrix(seq1: Sequence, seq2: Sequence):
"""Compute the matrix commonly computed to produce the Levenshtein distance.
This is also known as the Wagner-Fischer algorithm. The matrix element at the bottom right contains the desired
@ -75,6 +76,12 @@ def distance(s1, s2):
Note that this is different from levenshtein() as this function knows about Unicode normalization and grapheme
clusters. This should be the correct way to compare two Unicode strings.
"""
# XXX
from .cli import ExtractedText
if isinstance(s1, ExtractedText):
s1 = s1.text
if isinstance(s2, ExtractedText):
s2 = s2.text
s1 = list(grapheme_clusters(unicodedata.normalize('NFC', s1)))
s2 = list(grapheme_clusters(unicodedata.normalize('NFC', s2)))
return levenshtein(s1, s2)

@ -138,7 +138,7 @@ def page_extract(tree):
# XXX Does a file have to have regions etc.? region vs lines etc.
# Filter empty region texts
regions = (r for r in regions if r.text is not None)
regions = [r for r in regions if r.text is not None]
return ExtractedText(regions, '\n')
# FIXME needs to handle normalization

@ -26,12 +26,23 @@
border: 2px solid;
border-radius: 5px;
}
#status-box {
position: fixed;
background: grey;
color: white;
width: 100%;
height: 2em;
}
</style>
</head>
<body>
<div id="status-box"> foo</div>
<div class="container">
{{ gt }}<br>

@ -4,11 +4,16 @@ function find_diff_class(classes) {
$(document).ready(function() {
$('.diff').mouseover(function() {
let c = find_diff_class($(this).attr('class'))
$('.' + c).addClass('diff-highlight')
let c = find_diff_class($(this).attr('class'));
$('.' + c).addClass('diff-highlight');
segment_id = $(this).attr('data-segment-id');
$('#status-box').text(segment_id);
});
$('.diff').mouseout(function() {
let c = find_diff_class($(this).attr('class'))
$('.' + c).removeClass('diff-highlight')
let c = find_diff_class($(this).attr('class'));
$('.' + c).removeClass('diff-highlight');
$('#status-box').text('');
});
});

@ -32,6 +32,11 @@ def words(s):
cat = subcat[0]
return cat in unwanted_categories or subcat in unwanted_subcategories
# XXX
from .cli import ExtractedText
if isinstance(s, ExtractedText):
s = s.text
# We follow Unicode Standard Annex #29 on Unicode Text Segmentation here: Split on word boundaries using
# uniseg.wordbreak.words() and ignore all "words" that contain only whitespace, punctation "or similar characters."
for word in uniseg.wordbreak.words(s):
@ -42,10 +47,20 @@ def words(s):
def words_normalized(s):
# XXX
from .cli import ExtractedText
if isinstance(s, ExtractedText):
s = s.text
return words(unicodedata.normalize('NFC', s))
def word_error_rate_n(reference, compared) -> Tuple[float, int]:
# XXX
from .cli import ExtractedText
if isinstance(reference, ExtractedText):
reference = reference.text
if isinstance(compared, ExtractedText):
compared = compared.text
if isinstance(reference, str):
reference_seq = list(words_normalized(reference))
compared_seq = list(words_normalized(compared))

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