The paper introduces Hough forests, which are random forests adapted to perform a generalized Hough transform in an efficient way. Compared to previous Hough-based systems such as implicit shape models, Hough forests improve the performance of the generalized Hough transform for object detection on a categorical level. At the same time, their flexibility permits extensions of the Hough transform to new domains such as object tracking and action recognition. Hough forests can be regarded as task-adapted codebooks of local appearance that allow fast supervised training and fast matching at test time. They achieve high detection accuracy since the entries of such codebooks are optimized to cast Hough votes with small variance and since their e...
This paper addresses the task of efficient object class detection by means of the Hough transform. T...
Abstract. Tracking multiple objects in parallel is a difficult task, espe-cially if instances are in...
This paper presents the MOUGH (Mixture of Uniform and Gaussian Hough) Transform for shape-based obj...
Hough forests have emerged as a powerful and versatile method, which achieves state-of-the-art resul...
We present a method for the detection of instances of an object class, such as cars or pedestrians, ...
Variations of the Implicit Shape Models (ISM) have been extensively used for part-based object detec...
Conference of 17th International Conference on Image Analysis and Processing, ICIAP 2013 ; Conferenc...
Appearance-based action recognition can be considered as a natural extension of appearance-based obj...
We present a method to classify and localize human actions in video using a Hough transform voting f...
Abstract — Much work on the detection and pose estimation of objects in the robotics context focused...
In this paper, we propose a novel extension to the Class-specific Hough Forest (CHF) framework for o...
Hough-based voting approaches have been successfully applied to object detection. While these method...
Hough transform based methods for object detection work by allowing image features to vote for the l...
Classical supervised object detection methods learn object models from labelled training data. This ...
Implicit Shape Models (ISM) have been developed for object detection and localisation in 2-D (RGB) i...
This paper addresses the task of efficient object class detection by means of the Hough transform. T...
Abstract. Tracking multiple objects in parallel is a difficult task, espe-cially if instances are in...
This paper presents the MOUGH (Mixture of Uniform and Gaussian Hough) Transform for shape-based obj...
Hough forests have emerged as a powerful and versatile method, which achieves state-of-the-art resul...
We present a method for the detection of instances of an object class, such as cars or pedestrians, ...
Variations of the Implicit Shape Models (ISM) have been extensively used for part-based object detec...
Conference of 17th International Conference on Image Analysis and Processing, ICIAP 2013 ; Conferenc...
Appearance-based action recognition can be considered as a natural extension of appearance-based obj...
We present a method to classify and localize human actions in video using a Hough transform voting f...
Abstract — Much work on the detection and pose estimation of objects in the robotics context focused...
In this paper, we propose a novel extension to the Class-specific Hough Forest (CHF) framework for o...
Hough-based voting approaches have been successfully applied to object detection. While these method...
Hough transform based methods for object detection work by allowing image features to vote for the l...
Classical supervised object detection methods learn object models from labelled training data. This ...
Implicit Shape Models (ISM) have been developed for object detection and localisation in 2-D (RGB) i...
This paper addresses the task of efficient object class detection by means of the Hough transform. T...
Abstract. Tracking multiple objects in parallel is a difficult task, espe-cially if instances are in...
This paper presents the MOUGH (Mixture of Uniform and Gaussian Hough) Transform for shape-based obj...