3,053 research outputs found
Deformable Part-based Fully Convolutional Network for Object Detection
Existing region-based object detectors are limited to regions with fixed box
geometry to represent objects, even if those are highly non-rectangular. In
this paper we introduce DP-FCN, a deep model for object detection which
explicitly adapts to shapes of objects with deformable parts. Without
additional annotations, it learns to focus on discriminative elements and to
align them, and simultaneously brings more invariance for classification and
geometric information to refine localization. DP-FCN is composed of three main
modules: a Fully Convolutional Network to efficiently maintain spatial
resolution, a deformable part-based RoI pooling layer to optimize positions of
parts and build invariance, and a deformation-aware localization module
explicitly exploiting displacements of parts to improve accuracy of bounding
box regression. We experimentally validate our model and show significant
gains. DP-FCN achieves state-of-the-art performances of 83.1% and 80.9% on
PASCAL VOC 2007 and 2012 with VOC data only.Comment: Accepted to BMVC 2017 (oral
Deformable Object Tracking with Gated Fusion
The tracking-by-detection framework receives growing attentions through the
integration with the Convolutional Neural Networks (CNNs). Existing
tracking-by-detection based methods, however, fail to track objects with severe
appearance variations. This is because the traditional convolutional operation
is performed on fixed grids, and thus may not be able to find the correct
response while the object is changing pose or under varying environmental
conditions. In this paper, we propose a deformable convolution layer to enrich
the target appearance representations in the tracking-by-detection framework.
We aim to capture the target appearance variations via deformable convolution,
which adaptively enhances its original features. In addition, we also propose a
gated fusion scheme to control how the variations captured by the deformable
convolution affect the original appearance. The enriched feature representation
through deformable convolution facilitates the discrimination of the CNN
classifier on the target object and background. Extensive experiments on the
standard benchmarks show that the proposed tracker performs favorably against
state-of-the-art methods
Self-tuned Visual Subclass Learning with Shared Samples An Incremental Approach
Computer vision tasks are traditionally defined and evaluated using semantic
categories. However, it is known to the field that semantic classes do not
necessarily correspond to a unique visual class (e.g. inside and outside of a
car). Furthermore, many of the feasible learning techniques at hand cannot
model a visual class which appears consistent to the human eye. These problems
have motivated the use of 1) Unsupervised or supervised clustering as a
preprocessing step to identify the visual subclasses to be used in a
mixture-of-experts learning regime. 2) Felzenszwalb et al. part model and other
works model mixture assignment with latent variables which is optimized during
learning 3) Highly non-linear classifiers which are inherently capable of
modelling multi-modal input space but are inefficient at the test time. In this
work, we promote an incremental view over the recognition of semantic classes
with varied appearances. We propose an optimization technique which
incrementally finds maximal visual subclasses in a regularized risk
minimization framework. Our proposed approach unifies the clustering and
classification steps in a single algorithm. The importance of this approach is
its compliance with the classification via the fact that it does not need to
know about the number of clusters, the representation and similarity measures
used in pre-processing clustering methods a priori. Following this approach we
show both qualitatively and quantitatively significant results. We show that
the visual subclasses demonstrate a long tail distribution. Finally, we show
that state of the art object detection methods (e.g. DPM) are unable to use the
tails of this distribution comprising 50\% of the training samples. In fact we
show that DPM performance slightly increases on average by the removal of this
half of the data.Comment: Updated ICCV 2013 submissio
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