81 |
Instructional variables involved in problems associated with diglossia in Arabic speaking schools in Israel. PIRLS 2006 findings ...
|
|
|
|
BASE
|
|
Show details
|
|
82 |
Brain Journal - The Relationship Between Test Takers' Multiple Intelligences And Their Performance On The Reading Sections Of Toefl And Ielts ...
|
|
|
|
BASE
|
|
Show details
|
|
83 |
Brain Journal - The Relationship Between Test Takers' Multiple Intelligences And Their Performance On The Reading Sections Of Toefl And Ielts ...
|
|
|
|
BASE
|
|
Show details
|
|
84 |
Die Sprachentransferunterstützung im Deutsch- und Englischunterricht bei Schülerinnen und Schülern unterschiedlicher Sprachlernerfahrung ...
|
|
|
|
BASE
|
|
Show details
|
|
85 |
Brain Journal - Vocabulary Learning As The Predictor Of Third-Grader Efl Learners' Achievement: A Case For Translation ...
|
|
|
|
BASE
|
|
Show details
|
|
86 |
Brain Journal - Vocabulary Learning As The Predictor Of Third-Grader Efl Learners' Achievement: A Case For Translation ...
|
|
|
|
BASE
|
|
Show details
|
|
87 |
Mental Workload Manipulation Using Multiple Homogeneous Tasks: Performance Effects
|
|
|
|
In: DTIC (2010)
|
|
BASE
|
|
Show details
|
|
88 |
Fluid intelligence loss linked to restricted regions of damage within frontal and parietal cortex.
|
|
|
|
In: Symplectic Elements at Oxford ; Europe PubMed Central ; PubMed (http://www.ncbi.nlm.nih.gov/pubmed/) ; Web of Science (Lite) (http://apps.webofknowledge.com/summary.do) ; CrossRef (2010)
|
|
BASE
|
|
Show details
|
|
89 |
Multiple retrieval models and regression models for prior art search
|
|
|
|
In: http://clef.isti.cnr.it/2009/working_notes/lopez-paperCLEF2009.pdf (2009)
|
|
BASE
|
|
Show details
|
|
90 |
Multiple retrieval models and regression models for prior art search
|
|
|
|
In: http://hal.archives-ouvertes.fr/docs/00/41/18/35/PDF/technote.pdf (2009)
|
|
BASE
|
|
Show details
|
|
91 |
Does degree of asymmetry relate to performance? An investigation of word recognition and reading in consistent and mixed handers.
|
|
|
|
In: Brain and cognition, vol 69, iss 3 (2009)
|
|
BASE
|
|
Show details
|
|
92 |
Graduate Committee Minutes
|
|
|
|
In: Graduate Committee Minutes (2009)
|
|
BASE
|
|
Show details
|
|
93 |
Graduate Committee Minutes
|
|
|
|
In: Graduate Committee Minutes (2009)
|
|
BASE
|
|
Show details
|
|
94 |
Graduate Committee Agenda (Amended)
|
|
In: Graduate Committee Agendas (2009)
|
|
BASE
|
|
Show details
|
|
95 |
Graduate Committee Agenda (Amended)
|
|
In: Graduate Committee Agendas (2009)
|
|
BASE
|
|
Show details
|
|
96 |
Graduate Committee Agenda
|
|
In: Graduate Committee Agendas (2009)
|
|
BASE
|
|
Show details
|
|
97 |
Graduate Committee Agenda
|
|
In: Graduate Committee Agendas (2009)
|
|
BASE
|
|
Show details
|
|
98 |
Portable Language-Independent Adaptive Translation From OCR
|
|
|
|
In: DTIC (2009)
|
|
BASE
|
|
Show details
|
|
99 |
Entity Retrieval by Hierarchical Relevance Model, Exploiting the Structure of Tables and Learning Homepage Classifiers
|
|
|
|
In: DTIC (2009)
|
|
BASE
|
|
Show details
|
|
100 |
Portable Language-Independent Adaptive Translation from OCR
|
|
|
|
In: DTIC (2009)
|
|
Abstract:
This quarter, we re-designed the Shape-DNA based rule line cleaning algorithm to minimize the degradation of the shape of text characters. Recall that in the Shape-DNA based cleaning approach, the projection onto the Shape-DNA space produces a rule line distance image that is used to clean the rule lines. However, this cleaning process can and does remove portions of legitimate text characters that resemble rule lines. Therefore, instead of using the rule line distance images for directly cleaning rule lines, we now use this image to model the rule lines present in the document. Specifically, by applying Hough transform to the rule line distance image, we compute a set of model parameters. In addition, we estimate the average thickness of the rule lines using the original input image. Finally, we use both the rule line model parameters and the rule line thickness information with a sliding window to clean the rule lines. Figure 2 shows an example where the performance of the new rule line cleaning algorithm is compared with the performance of the previous version of the shape-DNA cleaning. This reporting period, we also improved the restoration algorithm for removing the artifacts introduced by rule line cleaning. Similar to rule line cleaning algorithm, Shape-DNA based restoration algorithm also includes an off-line training process, where text characters shapes are learned off-line by training about 100 handwritten text images (with no rule lines) and a Shape-DNA database is computed from the shape patterns. These shape blocks from the input image onto the database and by searching for the closest shape pattern in the database. Unlike our previous version, where shape-DNA restoration was applied to entire image, we now use the estimated rule line model parameters to constrain the restoration into the local proximity of detected rule lines. ; Program Code 7M30. The original document contains color images. All DTIC reproductions will be in black and white.
|
|
Keyword:
*ALGORITHMS; *MACHINE TRANSLATION; *OPTICAL CHARACTER RECOGNITION; Cybernetics; DATA BASES; DATA SETS; DEGRADATION; ERROR ANALYSIS; GRAPHS; HANDWRITING; IMAGE DISSECTION; Linguistics; MADCAT PROGRAM; MAXIMUM LIKELIHOOD ESTIMATION; METADATA EXTRACTION; MLLR(MAXIMUM LIKELIHOOD REGRESSION ANALYSIS); OFFLINE SYSTEMS; SHAPE DNA MODELS; TEXT PROCESSING; TEXT SEGMENTATION; VERIFICATION; WORD ERROR RATE; WORD RECOGNITION
|
|
URL: http://oai.dtic.mil/oai/oai?&verb=getRecord&metadataPrefix=html&identifier=ADA510335 http://www.dtic.mil/docs/citations/ADA510335
|
|
BASE
|
|
Hide details
|
|
|
|