65 research outputs found
Bringing Background into the Foreground: Making All Classes Equal in Weakly-supervised Video Semantic Segmentation
Pixel-level annotations are expensive and time-consuming to obtain. Hence,
weak supervision using only image tags could have a significant impact in
semantic segmentation. Recent years have seen great progress in
weakly-supervised semantic segmentation, whether from a single image or from
videos. However, most existing methods are designed to handle a single
background class. In practical applications, such as autonomous navigation, it
is often crucial to reason about multiple background classes. In this paper, we
introduce an approach to doing so by making use of classifier heatmaps. We then
develop a two-stream deep architecture that jointly leverages appearance and
motion, and design a loss based on our heatmaps to train it. Our experiments
demonstrate the benefits of our classifier heatmaps and of our two-stream
architecture on challenging urban scene datasets and on the YouTube-Objects
benchmark, where we obtain state-of-the-art results.Comment: 11 pages, 4 figures, 7 tables, Accepted in ICCV 201
Encouraging LSTMs to Anticipate Actions Very Early
In contrast to the widely studied problem of recognizing an action given a
complete sequence, action anticipation aims to identify the action from only
partially available videos. As such, it is therefore key to the success of
computer vision applications requiring to react as early as possible, such as
autonomous navigation. In this paper, we propose a new action anticipation
method that achieves high prediction accuracy even in the presence of a very
small percentage of a video sequence. To this end, we develop a multi-stage
LSTM architecture that leverages context-aware and action-aware features, and
introduce a novel loss function that encourages the model to predict the
correct class as early as possible. Our experiments on standard benchmark
datasets evidence the benefits of our approach; We outperform the
state-of-the-art action anticipation methods for early prediction by a relative
increase in accuracy of 22.0% on JHMDB-21, 14.0% on UT-Interaction and 49.9% on
UCF-101.Comment: 13 Pages, 7 Figures, 11 Tables. Accepted in ICCV 2017. arXiv admin
note: text overlap with arXiv:1611.0552
Proposal-free Temporal Moment Localization of a Natural-Language Query in Video using Guided Attention
This paper studies the problem of temporal moment localization in a long
untrimmed video using natural language as the query. Given an untrimmed video
and a sentence as the query, the goal is to determine the starting, and the
ending, of the relevant visual moment in the video, that corresponds to the
query sentence. While previous works have tackled this task by a
propose-and-rank approach, we introduce a more efficient, end-to-end trainable,
and {\em proposal-free approach} that relies on three key components: a dynamic
filter to transfer language information to the visual domain, a new loss
function to guide our model to attend the most relevant parts of the video, and
soft labels to model annotation uncertainty. We evaluate our method on two
benchmark datasets, Charades-STA and ActivityNet-Captions. Experimental results
show that our approach outperforms state-of-the-art methods on both datasets.Comment: Winter Conference on Applications of Computer Vision 202
The IKEA ASM Dataset: Understanding People Assembling Furniture through Actions, Objects and Pose
The availability of a large labeled dataset is a key requirement for applying
deep learning methods to solve various computer vision tasks. In the context of
understanding human activities, existing public datasets, while large in size,
are often limited to a single RGB camera and provide only per-frame or per-clip
action annotations. To enable richer analysis and understanding of human
activities, we introduce IKEA ASM---a three million frame, multi-view,
furniture assembly video dataset that includes depth, atomic actions, object
segmentation, and human pose. Additionally, we benchmark prominent methods for
video action recognition, object segmentation and human pose estimation tasks
on this challenging dataset. The dataset enables the development of holistic
methods, which integrate multi-modal and multi-view data to better perform on
these tasks
Outcome of Vaginal Progesterone as a Tocolytic Agent: Randomized Clinical Trial
Vaginal progesterone has a potential beneficial effect in postponing of preterm labor by suppression of prostaglandins cascades. Although different studies evaluated the use of progesterone for preterm birth, the exact effect of which on prolongation of pregnancy remains unclear. Seventy two women who underwent preterm labor were managed by magnesium sulfate. Then they were randomly assigned to continue pregnancy either by applying vaginal progesterone (400 mg) until delivery or without using any drug. Gestational age mean at the time of delivery (P = 0.039) and postponing delivery mean time (P = 0.048)
were significantly higher in progesterone group. Comparison of neonatal outcomes between two groups of patients showed meaningful benefits of progesterone in increasing of neonatal weight, reduction of low birth weight babies, and lowing neonate admitted in NICU
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