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Proceedings ArticleDOI

Evolving cascades of voting feature detectors for vehicle detection in satellite imagery

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TLDR
The evolved detection system exhibits competitive sensitivity and relatively low false positive rate for testing images, despite not making use of domain-specific knowledge.
Abstract
We propose an evolutionary method for detection of vehicles in satellite imagery which involves a large number of simple elementary features and multiple detectors trained by genetic programming. The complete detection system is composed of several detectors that are chained into a cascade and successively filter out the negative examples. Each detector is a committee of genetic programming trees that together vote over the decision concerning vehicle presence, and is trained only on the examples classified as positive by the previous cascade node. The individual trees use typical arithmetic transformations to aggregate features selected from a very large collections of Haar-like features derived from the input image. The paper presents detailed description of the proposed algorithm and reports the results of an extensive computational experiment carried out on real-world satellite images. The evolved detection system exhibits competitive sensitivity and relatively low false positive rate for testing images, despite not making use of domain-specific knowledge.

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Book ChapterDOI

Transparent, online image pattern classification using a learning classifier system

TL;DR: This paper shows that LCS enable online, reinforcement learning on datasets that may change over time and produce transparent (human readable) classification rules.

VDIS: A System for Morphological Detection & Identification of Vehicles in RGB images

TL;DR: A method for the detection and identification of vehicles from low altitude, high spatial resolution Red Blue Green (RGB) images, utilizing both object spectra and image morphology is presented, showing an identification performance upwards of 62% with false positives occurring from the use of images with sun glare and vehicles with similar spectra values.
Book ChapterDOI

Evolutionary tuning of compound image analysis systems for effective license plate recognition

TL;DR: An evolutionary algorithm applied to tuning of parameters of license plate detection systems is described, demonstrating that all considered systems can be effectively tuned using evolutionary algorithm, and that compound systems can outperform the simple ones.

Design and development of image based lane warning and anti-collision detection system

TL;DR: An image processing based Lane Departure Warning System (LDWS) and Forward Collision Warning (FCW) were introduced in one system namely smart Inner Rear View Mirror (IRVM), which will monitor the road parameters and give a warning to the driver to be attentive whenever there is deviation from the lane or possible collision.
References
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Proceedings Article

Fast and Robust Classification using Asymmetric AdaBoost and a Detector Cascade

TL;DR: A new variant of AdaBoost is proposed as a mechanism for training the simple classifiers used in the cascade in domains where the distribution of positive and negative examples is highly skewed (e.g. face detection or database retrieval).
Journal ArticleDOI

Fast Asymmetric Learning for Cascade Face Detection

TL;DR: A linear asymmetric classifier (LAC) is presented, a classifier that explicitly handles the asymmetric learning goal as a well-defined constrained optimization problem and is demonstrated experimentally that LAC results in an improved ensemble classifier performance.
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