200 research outputs found
Deep Saliency with Encoded Low level Distance Map and High Level Features
Recent advances in saliency detection have utilized deep learning to obtain
high level features to detect salient regions in a scene. These advances have
demonstrated superior results over previous works that utilize hand-crafted low
level features for saliency detection. In this paper, we demonstrate that
hand-crafted features can provide complementary information to enhance
performance of saliency detection that utilizes only high level features. Our
method utilizes both high level and low level features for saliency detection
under a unified deep learning framework. The high level features are extracted
using the VGG-net, and the low level features are compared with other parts of
an image to form a low level distance map. The low level distance map is then
encoded using a convolutional neural network(CNN) with multiple 1X1
convolutional and ReLU layers. We concatenate the encoded low level distance
map and the high level features, and connect them to a fully connected neural
network classifier to evaluate the saliency of a query region. Our experiments
show that our method can further improve the performance of state-of-the-art
deep learning-based saliency detection methods.Comment: Accepted by IEEE Conference on Computer Vision and Pattern
Recognition(CVPR) 2016. Project page:
https://github.com/gylee1103/SaliencyEL
Utilising Visual Attention Cues for Vehicle Detection and Tracking
Advanced Driver-Assistance Systems (ADAS) have been attracting attention from
many researchers. Vision-based sensors are the closest way to emulate human
driver visual behavior while driving. In this paper, we explore possible ways
to use visual attention (saliency) for object detection and tracking. We
investigate: 1) How a visual attention map such as a \emph{subjectness}
attention or saliency map and an \emph{objectness} attention map can facilitate
region proposal generation in a 2-stage object detector; 2) How a visual
attention map can be used for tracking multiple objects. We propose a neural
network that can simultaneously detect objects as and generate objectness and
subjectness maps to save computational power. We further exploit the visual
attention map during tracking using a sequential Monte Carlo probability
hypothesis density (PHD) filter. The experiments are conducted on KITTI and
DETRAC datasets. The use of visual attention and hierarchical features has
shown a considerable improvement of 8\% in object detection which
effectively increased tracking performance by 4\% on KITTI dataset.Comment: Accepted in ICPR202
Salient Object Detection Techniques in Computer Vision-A Survey.
Detection and localization of regions of images that attract immediate human visual attention is currently an intensive area of research in computer vision. The capability of automatic identification and segmentation of such salient image regions has immediate consequences for applications in the field of computer vision, computer graphics, and multimedia. A large number of salient object detection (SOD) methods have been devised to effectively mimic the capability of the human visual system to detect the salient regions in images. These methods can be broadly categorized into two categories based on their feature engineering mechanism: conventional or deep learning-based. In this survey, most of the influential advances in image-based SOD from both conventional as well as deep learning-based categories have been reviewed in detail. Relevant saliency modeling trends with key issues, core techniques, and the scope for future research work have been discussed in the context of difficulties often faced in salient object detection. Results are presented for various challenging cases for some large-scale public datasets. Different metrics considered for assessment of the performance of state-of-the-art salient object detection models are also covered. Some future directions for SOD are presented towards end
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