16,526 research outputs found
Understanding face and eye visibility in front-facing cameras of smartphones used in the wild
Commodity mobile devices are now equipped with high-resolution front-facing cameras, allowing applications in biometrics (e.g., FaceID in the iPhone X), facial expression analysis, or gaze interaction. However, it is unknown how often users hold devices in a way that allows capturing their face or eyes, and how this impacts detection accuracy. We collected 25,726 in-the-wild photos, taken from the front-facing camera of smartphones as well as associated application usage logs. We found that the full face is visible about 29% of the time, and that in most cases the face is only partially visible. Furthermore, we identified an influence of users' current activity; for example, when watching videos, the eyes but not the entire face are visible 75% of the time in our dataset. We found that a state-of-the-art face detection algorithm performs poorly against photos taken from front-facing cameras. We discuss how these findings impact mobile applications that leverage face and eye detection, and derive practical implications to address state-of-the art's limitations
Measuring and Managing Answer Quality for Online Data-Intensive Services
Online data-intensive services parallelize query execution across distributed
software components. Interactive response time is a priority, so online query
executions return answers without waiting for slow running components to
finish. However, data from these slow components could lead to better answers.
We propose Ubora, an approach to measure the effect of slow running components
on the quality of answers. Ubora randomly samples online queries and executes
them twice. The first execution elides data from slow components and provides
fast online answers; the second execution waits for all components to complete.
Ubora uses memoization to speed up mature executions by replaying network
messages exchanged between components. Our systems-level implementation works
for a wide range of platforms, including Hadoop/Yarn, Apache Lucene, the
EasyRec Recommendation Engine, and the OpenEphyra question answering system.
Ubora computes answer quality much faster than competing approaches that do not
use memoization. With Ubora, we show that answer quality can and should be used
to guide online admission control. Our adaptive controller processed 37% more
queries than a competing controller guided by the rate of timeouts.Comment: Technical Repor
Unifying and Merging Well-trained Deep Neural Networks for Inference Stage
We propose a novel method to merge convolutional neural-nets for the
inference stage. Given two well-trained networks that may have different
architectures that handle different tasks, our method aligns the layers of the
original networks and merges them into a unified model by sharing the
representative codes of weights. The shared weights are further re-trained to
fine-tune the performance of the merged model. The proposed method effectively
produces a compact model that may run original tasks simultaneously on
resource-limited devices. As it preserves the general architectures and
leverages the co-used weights of well-trained networks, a substantial training
overhead can be reduced to shorten the system development time. Experimental
results demonstrate a satisfactory performance and validate the effectiveness
of the method.Comment: To appear in the 27th International Joint Conference on Artificial
Intelligence and the 23rd European Conference on Artificial Intelligence,
2018. (IJCAI-ECAI 2018
THE INFLUENCE OF BUSINESS STRATEGY, CORPORATE GOVERNANCE AND FIRM CHARACTERISTICS TO THE RISK DISCLOSURE ON THE SMALL AND MEDIUM ENTERPRISES
This study aims to examine the influence of business strategy, corporate governance and firm characteristics to the risk disclosure. Each factor can be extended to several variables, which are the barriers to entry, cost leadership, board of commissioner size, ownership concentration, liquidity, industrial profile and auditor type. Hence, this study examines those variables to the risk disclosure.
Total sample used in this study are 96 samples which collected from 2008 until 2015. The samples are companies which listed in Indonesian Stock Exchange and incorporated in PEFINDO 25 Index. The criteria of the sample are conducted using purposive sampling method. This study used multiple regression analysis to examine the influence of business strategy, corporate governance, and firm characteristics to the risk disclosure.
The result of this study shows that there is an influence from barriers to entry, board of commissioner size, ownership concentration, industrial profile and auditor type to the risk disclosure. However, cost leadership and liquidity are proven to not have an influence to the risk disclosure. The result of this study is expected to give contribution for further research, government, the management of the company and investor about the risk disclosure practices
Feedback-prop: Convolutional Neural Network Inference under Partial Evidence
We propose an inference procedure for deep convolutional neural networks
(CNNs) when partial evidence is available. Our method consists of a general
feedback-based propagation approach (feedback-prop) that boosts the prediction
accuracy for an arbitrary set of unknown target labels when the values for a
non-overlapping arbitrary set of target labels are known. We show that existing
models trained in a multi-label or multi-task setting can readily take
advantage of feedback-prop without any retraining or fine-tuning. Our
feedback-prop inference procedure is general, simple, reliable, and works on
different challenging visual recognition tasks. We present two variants of
feedback-prop based on layer-wise and residual iterative updates. We experiment
using several multi-task models and show that feedback-prop is effective in all
of them. Our results unveil a previously unreported but interesting dynamic
property of deep CNNs. We also present an associated technical approach that
takes advantage of this property for inference under partial evidence in
general visual recognition tasks.Comment: Accepted to CVPR 201
Sharing beliefs: between agreeing and disagreeing
We show that when decision makers are of the multiple prior kind, there is an equivalence between no betting and non empty intersection of the sets of priors.multiple prior; betting
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