Training-Free Probability Models for Whole-Image Based Place Recognition
نویسندگان
چکیده
Whole-image descriptors such as GIST have been used successfully for persistent place recognition when combined with temporal filtering or sequential filtering techniques. However, whole-image descriptor localization systems often apply a heuristic rather than a probabilistic approach to place recognition, requiring substantial environmental-specific tuning prior to deployment. In this paper we present a novel online solution that uses statistical approaches to calculate place recognition likelihoods for whole-image descriptors, without requiring either environmental tuning or pre-training. Using a real world benchmark dataset, we show that this method creates distributions appropriate to a specific environment in an online manner. Our method performs comparably to FAB-MAP in raw place recognition performance, and integrates into a state of the art probabilistic mapping system to provide superior performance to whole-image methods that are not based on true probability distributions. The method provides a principled means for combining the powerful change-invariant properties of whole-image descriptors with probabilistic back-end mapping systems without the need for prior training or system tuning.
منابع مشابه
Arabic OCR Segmented - based System Hassanin
A new investigation in the Arabic OCR system has presented for the offline recognition of machineprinted cursive words. Therefore, a reliable transformation mechanism will be used to transform image text into free text (ASCII or Unicode Texts), that can be directly searched by a computer. Therefore, traditional preprocessing model (segmentation phase) will be included to extract each word from ...
متن کاملSpeaker Adaptation in Continuous Speech Recognition Using MLLR-Based MAP Estimation
A variety of methods are used for speaker adaptation in speech recognition. In some techniques, such as MAP estimation, only the models with available training data are updated. Hence, large amounts of training data are required in order to have significant recognition improvements. In some others, such as MLLR, where several general transformations are applied to model clusters, the results ar...
متن کاملSpeaker Adaptation in Continuous Speech Recognition Using MLLR-Based MAP Estimation
A variety of methods are used for speaker adaptation in speech recognition. In some techniques, such as MAP estimation, only the models with available training data are updated. Hence, large amounts of training data are required in order to have significant recognition improvements. In some others, such as MLLR, where several general transformations are applied to model clusters, the results ar...
متن کاملVision-based SLAM in Changing Outdoor Environments
For robots operating in outdoor environments, a number of factors such as weather, time of day, rough terrain, high speeds and hardware limitations make performing vision-based SLAM with current techniques infeasible due to factors such as image blur and/or underexposure, especially on smaller platforms and low cost hardware. In this paper we present novel visual place recognition and odometry ...
متن کاملSegmentation-free word recognition with application to Arabic
This paper describes the design and implementation of a system that recognizes machine-printed Arabic words without prior segmentation. The technique is based on describing symbols in terms of shape primitives. At recognition time, the primitives are detected on a word image using mathematical m.orphology operations. The system then matches the detected primitives with symbol models. This leads...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2013