A new warping technique for normalizing likelihood of multiple classifiers and its effectiveness in combined on-line/off-line japanese character recognition
نویسندگان
چکیده
We propose a new technique for normalizing likelihood of multiple classifiers prior to their combination. Our technique takes classifier-specific likelihood characteristics into account and maps them to a common, ideal characteristic allowing fair combination under arbitrary combination schemes. For each classifier, a simple warping process aligns the likelihood with the accumulated recognition rate, so that recognition rate becomes a uniformly increasing function of likelihood. For combining normalized likelihood values, we investigate several elementary combination rules, such as sum-rule or max-rule. We achieved a significant performance gain of more than five percent, compared to the best single recognition rate, showing both the effectiveness of our method for classifier combination and the benefit of combining on-line Japanese character recognition with stroke order and stroke number independent off-line recognition. Moreover, our experiments provide additional empirical evidence for the good performance of the sum rule in comparison with other elementary combination rules, as has already been observed by other research groups.
منابع مشابه
Accumulated-Recognition-Rate Normalization for Combining Multiple On/Off-Line Japanese Character Classifiers Tested on a Large Database
This paper presents a technique for normalizing likelihood of multiple classifiers, allowing their fair combination. Our technique generates for each recognizer one general or several stroke-number specific characteristic functions. A simple warping process maps output scores into an ideal characteristic. A novelty of our approach is in using a characteristic based on the accumulated recognitio...
متن کاملUsing Stroke-Number-Characteristics for Improving Efficiency of Combined Online and Offline Japanese Character Classifiers
We propose a new technique for normalizing likelihood of multiple classifiers prior to their combination. During a combination process we utilize the information about their efficiency correctly recognize a character with a given stroke number. In the beginning, we show that this recognizer’s efficiency based on a stroke number is different for a common on-line and off-line recognizer. Later, w...
متن کاملA Model of On-line Handwritten Japanese Text Recognition Free from Line Direction and Writing Format Constraints
This paper presents a model and its effect for on-line handwritten Japanese text recognition free from line-direction constraint and writing format constraint such as character writing boxes or ruled lines. The model evaluates the likelihood composed of character segmentation, character recognition, character pattern structure and context. The likelihood of character pattern structure considers...
متن کاملVirtual Example Synthesis Based on PCA for Off-Line Handwritten Character Recognition
This paper proposes a method to improve off-line character classifiers learned from examples using virtual examples synthesized from an on-line character database. To obtain good classifiers, a large database which contains a large enough number of variations of handwritten characters is usually required. However, in practice, collecting enough data is time-consuming and costly. In this paper, ...
متن کاملBuilding compact recognizer with recognition rate maintained for on-line handwritten Japanese text recognition
The paper presents complexity reduction of an on-line handwritten Japanese text recognition system by selecting an optimal off-line recognizer in combination with an on-line recognizer, geometric context evaluation, and linguistic context evaluation. The result is that a surprisingly simple off-line recognizer, which is weak on its own, produces nearly the best recognition rate in combination w...
متن کامل