Title :
Multistage Particle Windows for Fast and Accurate Object Detection
Author :
Gualdi, Giovanni ; Prati, Andrea ; Cucchiara, Rita
Author_Institution :
Dept. of Inf. Eng., Univ. of Modena & Reggio Emilia, Modena, Italy
Abstract :
The common paradigm employed for object detection is the sliding window (SW) search. This approach generates grid-distributed patches, at all possible positions and sizes, which are evaluated by a binary classifier: The tradeoff between computational burden and detection accuracy is the real critical point of sliding windows; several methods have been proposed to speed up the search such as adding complementary features. We propose a paradigm that differs from any previous approach since it casts object detection into a statistical-based search using a Monte Carlo sampling for estimating the likelihood density function with Gaussian kernels. The estimation relies on a multistage strategy where the proposal distribution is progressively refined by taking into account the feedback of the classifiers. The method can be easily plugged into a Bayesian-recursive framework to exploit the temporal coherency of the target objects in videos. Several tests on pedestrian and face detection, both on images and videos, with different types of classifiers (cascade of boosted classifiers, soft cascades, and SVM) and features (covariance matrices, Haar-like features, integral channel features, and histogram of oriented gradients) demonstrate that the proposed method provides higher detection rates and accuracy as well as a lower computational burden w.r.t. sliding window detection.
Keywords :
Bayes methods; Gaussian processes; Monte Carlo methods; feature extraction; grid computing; image classification; image sampling; object detection; search problems; Bayesian-recursive framework; Gaussian kernels; Monte Carlo sampling; accurate object detection; binary classifier; face detection; fast object detection; grid-distributed patches; likelihood density function; multistage particle windows; multistage strategy; pedestrian detection; sliding window detection; sliding window search; statistical-based search; temporal coherency; Accuracy; Face; Face detection; Feature extraction; Object detection; Search problems; Support vector machines; Efficient object detection; coarse-to-fine search refinement.; pedestrian detection; Algorithms; Biometric Identification; Humans; Image Processing, Computer-Assisted; Monte Carlo Method; Video Recording; Walking;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2011.247