Object Detection in the Presence of Clutter Using Gabor Filters
نویسندگان
چکیده
In this paper the problem of detecting objects in the presence of clutter is studied. The images considered are obtained from both visual and infra-red sensors. A feature-based segmentation approach to the object detection problem is pursued, where the features used are computed over multiple spatial ori-entations, and frequencies. The method proceeds as follows: A given image is passed through a bank of even-symmetric Gabor lters. A selection of these ltered images is made and each (selected) ltered image is subjected to a nonlinear (sigmoidal like) transformation. Then, a measure of texture \energy" is computed in a window around each transformed image pixel. The texture \energy" features, and their spatial locations, are inputted to a squared error clustering algorithm. This clustering algorithm yields a segmentation of the original image-it assigns to each pixel in the image a cluster label that identiies the amount of mean local energy the pixel possesses across diierent spatial orientations, and frequencies. This method is applied on a number of visual and infra-red images, each one of which contains one or more objects. The region corresponding to the object is usually segmented correctly, and a unique set of texture \energy" features is typically associated with the segment containing the object(s) of interest.
منابع مشابه
3D Gabor Based Hyperspectral Anomaly Detection
Hyperspectral anomaly detection is one of the main challenging topics in both military and civilian fields. The spectral information contained in a hyperspectral cube provides a high ability for anomaly detection. In addition, the costly spatial information of adjacent pixels such as texture can also improve the discrimination between anomalous targets and background. Most studies miss the wort...
متن کاملBiTS – A Biologically-Inspired Target Screener for Detecting Manmade Objects in Natural Clutter Backgrounds
Motivated by biologically-inspired architectures for video analysis and object recognition, a new single band electro-optical (EO) object detector is described for aerial reconnaissance and surveillance applications. Our bio-inspired target screener (BiTS) uses a bank of Gabor filters to compute a vector of texture features over a range of scales and orientations. The filters are designed to ex...
متن کاملHierarchical Gabor filters for object detection in infrared images
This paper presents a new representation called “hierarchical G a b o r f i l ters” and associated novel local measures which are used t o detect potent ial objects of interest in images. The “first stage” of the approach uses a wavelet set of wide-bandwidth separable Gabor f i l ters t o extract local measures f r o m an image. The “second stage makes certain spatial groupings explicit by crea...
متن کاملPerformance evaluation of 2-D adaptive prediction filters for detection of small objects in image data
This work studies the performance of dimensional least mean square (TDLMS) adaptive filters as prewhitening filters for the detection of small objects in image data. The object of interest is assumed to have a very small spatial spread and is obscured by correlated clutter of much larger spatial extent. The correlated clutter is predicted and subtracted from the input signal, leaving components...
متن کاملObject Localization Using Linear Adaptive Filters
We present a novel approach to localization of objects in clutter images with the use of linear adaptive filters in a two-object classifier: target object versus clutter object. An automatic optimized feature extraction processing is suggested to generate two pair of models: “target” and “clutter” models from training image databases, and “clutter-like-target” and “target-like-clutter” models f...
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 2007