Showing posts with label brand safety. Show all posts
Showing posts with label brand safety. Show all posts
Tuesday, 30 June 2020
Visual content moderation is important for businesses
or brands, especially if they have to deal with a lot of user-generated visual content.
Any association with inappropriate content can damage their reputation, weaken
consumer trust and result in decrease in sales.
Traditionally, visual content classification and moderation
has been done manually. But with the advent of AI, automated content moderation
platforms have emerged. These platforms make use of computer vision and provide
an effective way for image and video classification and moderation.
Whether a brand or business should moderate visual
content manually, use AI-powered automated content moderation or augment manual
moderation with an automated one, depends on a number of factors. These factors
are discussed here below –
Source of content
In order to build brand recognition and consumer trust,
more and more brands are now allowing user-generated content on their own platforms.
However, user-generated content is potentially risky and can include inappropriate
matter that can be highly damaging for the brands. Although brands can dictate
their content posting guidelines to users, they do not have actual control over
what a user is posting. Moderating such content is a must for brands. As there
are high chances of user-generated visual content being inappropriate or unsuitable,
brands should opt for computer vision-powered video and image classification
and moderation platform.
If in case, most of a brand’s visual content is not
user-generated, but is sourced internally or from highly trust-worthy third
parties, then for such a brand, video and image moderation can be performed
manually by hiring human content moderators and there is a lesser need for an
automated system.
Volume of content
For brands that have to deal with a good volume of
visual content, especially user-generated content, manual moderation does not
work effectively and efficiently. They should make use of computer
vision-powered image and video moderation platforms.
AI-powered systems can tackle enormous content volume
with a high degree of accuracy. Computer vision technology effectively
classifies and tags visual content at scale. Such automated systems are not
plagued by human errors, can work continuously unlike human beings, and their
algorithms get self-trained from the data they handle.
Nature of content
An automated AI content moderation platform can
effectively filter out content such as “not safe for work” images and videos,
and other forms of inappropriate, offensive or dangerous content, but it falls
short when it comes to filtering out misinformation. Here, human intervention
from human content moderators is required.
User-generated visual content can be highly mentally disturbing
for human content moderators. Filtering out such content through automated
computer vision powered content classification and moderation platform is the
best way to prevent ill effects on mental health.
Hiring a large number of human moderators is quite
expensive and may not be feasible for businesses with small budgets. Also, in
most of the cases, as discussed above, manual moderation is less effective than
computer vision powered visual content moderation.
For brands or businesses that have to handle a large
amount of user-generated visual content, computer vision-based content
moderation is much better than manual moderation in terms of accuracy,
effectiveness and efficiency.
Monday, 15 June 2020
Impact of Prevailing Notions and Culture on Brand Safety
05:15 Silver Push
Brand safety is a relative concept that
changes with time and depends on the prevailing notions and culture. Today, in
the digital times, changes in people’s thinking and cultural norms occur at a much
faster rate, and therefore, brand safety is much more frequently affected.
Brands today advertise against different
types of websites such as news sites and video hosting platforms. The content
on these sites reflect the current notions. This poses a serious challenge to
brands, as brands do not know against which content their ads may appear. For
example, an ad of a car having a huge diesel engine may appear on a news
website or YouTube against a story or video talking about the negative effects
of climate change on the environment. A decade ago, this might not have posed
any problem for the car brand, but in today’s time, climate change is regarded
as a grave issue and consumers will form a negative impression of the
brand.
For brands, #metoo movement surfaced as a
shift in the cultural norms that cast a huge impact on their advertising
strategy. Brands refrained themselves from placing their ads next to the
movement related content. Cultural brand safety norms vary from region
to region. For example, brands in the United States are susceptible to opposing
political views, while those in the Europe are vulnerable to fascist content.
Thus, brands are required to devise their brand safety strategy according to
the region in which they want to promote their products.
Research shows that consumers think that
it is the responsibility of brands and their agencies to ensure their ads do
not appear against harmful or inappropriate content. Brands should devise a proactive
and elastic brand safety strategy that can keep them protected from changes in cultural
norms that are bound to keep occurring.
Brands should continuously pay attention
to real-world cultural, social and political events along with evolving
behavior of consumers to keep themselves abreast of negative content and trends.
This will save them from getting entangled in a brand safety crisis. Brands
should pay attention to both local and global happenings in order to run successful
cross-border campaigns.
A robust brand safety strategy would be
that which can effectively deal with changing cultural norms, changing notions
of people, and differences that exist across country lines. Brands should use a
brand safety solution that works in real-time, provides a very high degree of
context relevance while detecting harmful or inappropriate contexts, and offers
custom controls.
Blanket exclusion methods based on keyword
blacklists have limitations such as content under- and over-blocking, and lack
the flexibility to offer custom controls to brands. AI-powered solutions have
emerged that focus on providing high context relevance, but those based on machine
learning, natural language processing, and semantic analysis are unable to
truly understand the sub-text, nuanced contexts, and complex relationships between
words.
True context relevance is only offered by brand
safety solutions that make use of computer vision. Various contexts in online
videos such as such as faces, objects, logos, on-screen text, emotions, scenes , and activities can be accurately detected by leveraging computer vision technology.
By using a computer vision powered brand safety solution, brands can
effectively get rid of harmful or unsuitable content, and ensure a true brand-suitable environment for achieving their video advertising goals.
To effectively deal with different notions
and cultural norms in different times and regions, brands should adopt a fully
context-relevant brand safety solution.
Tuesday, 2 June 2020
Protecting brand reputation with AI
04:27 Silver Push
We just learned something quite distressing – that one in 10 videos out in the online jungle we call the internet – can contain something potentially ‘harmful’ and ‘damaging’.
What we mean by this is that some videos contain certain elements that may not be accurately reflected by the title or tags associated with it. This poses a problem for brands who may not want to be associated with adult themes or extreme violence.
To find out what this means for brands and what options they have, we spoke to Kartik Mehta, Chief Revenue Officer, SilverPush. With their new product Mirrors Safe, the brand offers an AI-Powered context-relevant brand suitability platform to help prevent unwanted associations.
In order to build this product and understand they extent of the issue, Silverpush reviewed 15 million videos across the largest video hosting and sharing platforms in the SEA region using Mirrors Safe. With one in 10 or 10% containing images or negative associations (according to Silverpush criteria), there is definitely a need for a solution.
Congrats on the launch of Mirrors Safe. How do you see this new product helping brands and their advertisements?
Brands today are faced with different types of risks – financial risks, legal risks, and I guess the most important part of it is the reputation risk which could have larger concerns and probably a long-lasting impact on the overall brand equity. The existing brand safety measures like blocklists and whitelists are primarily focused on the principle of exclusion, which does protect brands to an extent but can also lead to one of the most pressing brand safety related concerns of over-blocking. Which can lead to brands missing the opportunity of engaging with the audiences across the right kind of content.
Whereas Mirrors Safe’s computer vision powered in-video context detection identifies faces, actions, scenes, emotions, on-screen-text in a streaming video to detect content that features violence, smoking, nudity, arms & guns and more. It detects these contexts only when they feature in a video, and not just by relying on keywords used to describe the video – which often times are misleading and can result both in unsafe placements as well as over blocking.
For instance, a video featuring smoking or violence might not be described so in its title, description or meta tags. There is no way for keyword-based solutions to identify these damaging contexts to filter out this video. Which can lead to household brands advertising across content which is highly unsuitable for their brand image. On the other hand, keywords like shoot, kill, crash, and even gun (some of the most blocked keywords) can easily be used within perfectly safe contexts, (like movies and songs).
Moreover, Mirrors Safe’s context detection makes it possible to offer brand suitability that can be customized for each brand or each category without following the blanket exclusion principles.
According to your research, 1 in 10 videos are deemed to be associated with dangerous or damaging content. How were you able to analyze around 15 million videos to generate this data?
Silverpush churned approximately 15 million videos across the largest video hosting and sharing platforms in the SEA region using Mirrors Safe. We used a randomly chosen inventory across platforms from our existing database – previously used to run campaigns using our video advertising platform Mirrors.
It was found that nearly 8-9% of analyzed content to be deemed brand unsafe. This means these videos featured one or more unsafe contexts like nudity, smoking, violence, arms and guns, and more.
However, a bigger discovery was the difference between the results found by exclusion through traditional methods like keyword lists vs. Mirror Safe’s in-video context detection technology.
For instance, when we used both methods to identify unsafe videos for one of the top brand unsafe categories – nudity and adult content, Mirrors Safe (through its frame-by-frame parsing) identified 300% more video content featuring unsafe context in this category, compared to exclusion through keyword lists.
A single damaging ad placement can harm brand perception in the consumer’s mind. This discovery highlights the potential harm that existing traditional measures are unable to detect. This has been witnessed time and time again, with some of the largest video advertising platforms being unable to keep brands safe from damaging content.
Have you been able to measure or estimate the negative impact of these associations for the brand?
There is already a plethora of information available on how even a single ad placement across harmful content can irreparably damage brand perception for a long time in the consumers mind. A 2019 study Trustworthy Accountability Group & Brand Safety Institute found that 80% consumers will stop or reduce buying products advertised against extreme or violent content. And, 70% believe advertiser and the agency are most responsible for a brand’s ad placements.
With our platform Mirrors, we have been serving contextually targeted video advertising across platforms since 2018. And we identified the challenge posed by traditional brand safety measures while serving our clients. We realized that ensuring brand safety is even more of a challenge across video formats, as NLP based technologies that work for other formats are ineffective in gauging the right context featured in video content.
Conversations and feedback from partners first led us to introduce a safety feature in Mirrors, where brands working with us did not report a single unsafe exposure since the launch of the feature. This further led us to launch Mirrors Safe, which can be deployed as a standalone context relevant suitability platform.
How has this solution helped brands so far? Do you have any initial test cases or beta usage that you can share?
I will start with the most interesting use case, that is highly relevant today.
Helped brands navigate the extreme over-blocking of COVID-19 related content
As brands and platforms rapidly add terms associated with COVID-19 to their keyword block, Coronavirus has become one of the most blocked keywords today. We have found advertisers looking to avoid unsafe brand exposure around this sensitive topic are forced to exclude news entirely from their list of targeted channels and publishers. However, excluding news and related channels entirely from advertising strategies across platforms is killing reach for brands.
One of the key factors behind extreme COVID-19 related over-blocking is the inability to detect if the COVID-19 related stories are informative Vs. stories that can harm brands – leading to blanket exclusions. Mirrors Safe identified what the video content features to differentiate the stories, in the following ways:
- On-screen text recognition: Mirrors Safe identifies and filters out videos that have related text written on the screen (e.g. Coronavirus or COVID-19). And can help differentiate between morbidity related stories Vs. more positive stories around for instance precautions.
- Object and action detection: the system can identify objects like masks, stretchers, and actions like coughing and sneezing and understand the concentration of this content within a single video through frame by frame parsing.
- Faces: with this outbreak certain public figures are also on brands’ blocklists (yes, Trump). In-video context detection can accurately identify faces to filter out related content.
Friday, 15 May 2020
01:56 Silver Push
How are brands responding to COVID-19? A
brand marketer survey across SEA market
Brands have been profoundly affected by the
coronavirus pandemic. Brands’ response to the coronavirus pandemic not only
impacts consumers’ trust today, but it will also significantly impact future
purchasing decisions. Moreover, brands could face irreparable damage to their reputation
due to brand safety risks associated with COVID-19 related content.
To gain insight into how brands are responding to
COVID-19 pandemic, Silverpush
conducted a
survey of 150+ agency heads, business leads in media, and brand
marketers in the SEA region in April 2020.
The survey aimed to understand how brands are adapting
their marketing strategies to the impact of the COVID-19 outbreak and how they
are mitigating the very real brand safety risks the rapidly growing coronavirus
related content consumption poses.
How are brands re-imaging and engaging
consumers in light of the pandemic?
The survey found that in the light of the pandemic,
brands are reimaging by adapting their marketing tone and initiatives to
consumer expectations. Only 5% respondents reported no change in brand
positioning pre and post COVID-19, whereas 95% reported a distinct shift that resonates
with government policies, and responds to the new consumer expectation.
Ad spending poised to decline
The industries heavily impacted by coronavirus
outbreak such as travel, hospitality, physical retail and more have and will
continue to paused marketing initiatives. Only 16% respondents said these
industries will protect marketing budgets for a stronger comeback later.
Moreover, the survey indicates that it is unlikely
that the industries such as health and FMCG that are currently experiencing
higher demand will increase marketing spend to capture the demand more
aggressively. Even though past recessions have shown that aggressive cuts in ad
spends can lead to longer recovery cycles.
Ad Spends are shifting to digital channels
Even with significantly increased TV viewership across
SEA, boosted due to government-imposed lockdowns across the region, and various
studies indicating curtailed TV ad spends can adversely affect brand health
measures - only 2% respondents said brands are spending more on TV and
mainstream media, and a large percentage indicated rapid shift to various
digital channels.
Brand safety is a key concern, and is
driving ad spend cuts
Industries, except few such as health, hygiene, pharma,
etc., are stringently avoiding advertising across COVID-19 related content.
Publisher news sites and news channels on platforms like YouTube are facing
advertisers’ block-lists due to coronavirus-related coverage.
A measure of advertisers’ confidence on brand safety
tools is depicted by how despite using third party tools to ensure safe ad
placements, brands are reducing marketing budgets and pausing advertising
specifically to avoid association with Coronavirus related content.
71% respondents reported brands are reducing marketing
budgets ranging from complete halt of marketing spends leading to up-to 80%
budget cuts, in order to avoid running ads across coronavirus related content
Can context relevance be the answer?
Emerging AI powered solutions are increasingly
focusing on providing context
relevance, and are fast becoming an answer to brand safety
woes. AI enables processing of large volumes of data at speed, with better
context, at higher scale and improved targeting efficiencies.
However, most of these contextual targeting solutions
still depend on the use of NLP and semantic analysis, not truly understanding
the sub-text, nuanced contexts, and complex relationship words have in written
or spoken language.
AI and computer vision-powered video advertising
solutions can detect in-video contexts, offering a higher degree of context
relevance that surpasses limitations of traditional keyword targeting and NLP
based technologies. They offer unparalleled insight for advertisers to place
context-relevant in video ads and exclude unsafe content in a highly structured
manner, and at the scale programmatic has traditionally offered.
You can access the full report ‘Brand
Response to COVID-19 in SEA’ for detailed insights
from the survey.
Thursday, 14 May 2020
22:06 Silver Push
Top Applications of Face Recognition
Technology
The work on face recognition technology started
decades ago, but only recently this technology has achieved widespread use. A
facial recognition system is used to identify a person from his face. A person
can be identified when he is present physically, or from his photograph or
video.
Once face detection and analysis was considered a part
of science fiction. But, now with the introduction of this technology in the
smartphones, many people have become well acquainted with its use. There are
many use cases deploying facial recognition technology, some of them are given
here below:
Access control
Whether it is about having access to a smartphone, or
to a building, or crossing a country’s border, facial recognition technology is
there to make it as secure as possible. By deploying this technology places
such as a school, workplace, residence, etc. become highly secure as only
authorized persons can enter into the premises.
Along with sensor-based automatic doors, face recognition
allows touchless entry and exit for employees. This will enable employers to
ensure employee health and safety at post Covid-19 contactless
workplaces.
Crime prevention and identification of
criminals
Facial recognition technology is deployed for
conducting police checks. In the U.S, law enforcement agencies use this
technology to run searches against licensed drivers’ database. To identify a
suspect in a huge crowd, a large aerial camera fitted on a drone and connected
to a face detection system can be used. In retail outlets, this technology can
identify a person with a history of shoplifting right at the time when he is
entering the premises.
Facial recognition-based CCTV systems can be used to find
missing children, victims of human trafficking, and criminals. In 2018, Delhi police
identified 2930 missing children while test running a new facial recognition software.
Attendance tracking
Although fingerprint-based biometric attendance
systems have proved to be effective at workplaces, they carry an inherent risk
of transmission of contagious diseases such as Covid-19. Being touch-based, they
can easily transfer viruses and bacteria from one person to another. Face
recognition attendance systems, powered by computer vision, work in a
contactless manner, thus providing an edge over the fingerprint-based systems. They
will help prevent spread of infectious diseases at post Covid-19 workplaces.
Video advertising
Computer vision powered face detection has
revolutionized the video advertising industry. By recognizing faces of the
characters in the online videos, this technology enables placing of in-video
ads that are in line with what a user is watching. Besides faces, computer
vision technology can easily identify emotions, objects, scenes and activities
in video. This advanced form of in-video contextual advertising is highly
effective, allowing brands to achieve unprecedented reach and user
engagement.
Health
Face recognition has been used to diagnose diseases. A
face detection software has been used by the researchers at the National Human
Genome Research Institute (NHGRI) in the United States to successfully diagnose
a rare, genetic condition known as DiGeorge syndrome. Facial analysis has made
it possible to track medication use by a patient in a more accurate manner.
This technology has also been used in the assessment of pain levels in order to
support pain management.
From contactless attendance to video
advertising, there are varied uses of the face recognition technology. More of
its use cases will surface in the near future as this technology is progressing
at a fast pace.
M-Shield, developed by Silverpush, is an AI-powered
facial recognition-based attendance, access management and human monitoring
system. This social distancing platform makes workplaces and public spaces safe
by preventing the spread of contagious diseases such as Covid-19.
M-Shield makes use of facial recognition technology,
powered by computer vision, for contactless attendance, entry/exit
access management, and mask and social distancing compliance. Its touchless
attendance tracking system accurately identifies the faces of employees, even if
they are wearing masks. It ensures mask compliance and detects whether the mask
is properly worn or not. M-Shield ensures workplace social distancing by
tracking minimum distance requirements between employees. Its contactless temperature
monitoring technology detects any anomaly in body temperature. It offers added
safety by generating an alert if someone coughs, sneezes, or do a handshake.
M-Shield will help employers re-introduce workforce
back into offices while ensuring employee health and safety, and
compliance with Covid-19 related policies. It will enable government to ensure
public safety, when the Covid-19 lockdown lifts.
Tuesday, 3 March 2020
We Are Excited to Announce Our New Brand Identity
02:41 Silver Push
We are delighted to announce our new brand
identity as part of the ongoing evolution of our brand. Our business has grown,
our technology has evolved, we are digging into new areas and have launched new
products, and so we thought that it’s time for a change. We have refreshed our
logo and website to reflect who we are today and to symbolize our future.
Our new brand identity resonates with our
focus on AI-powered in-video ads contextual advertising. The new brand identity
perfectly aligns our company with our successful foray into offering cutting
edge AI-powered solutions that are redefining limits of in-video contextual
targeting.
With blue and green colors in our new
website, we have centered our new identity around AI and technology, keeping it
modern and focused on trust. The yellow color imbibes the fresh and playful
characteristics of the brand - offering flexibility for future innovation. These
branding elements have also translated into a new logo, which projects motion
and pace.
![]() |
in-video ads |
We started our journey in 2012 as the first Demand Side Platform in India. Since then, we have brought many innovative products to the market, including the first of its kind Cross-Device Ad Targeting solution launched in 2014, and the Real-time Moment Marketing platform, Parallels, in 2018.
We launched Mirrors, the first computer-vision powered
in-video contextual advertising platform, in 2019. Mirrors is able to effectively
detect contexts like faces, objects, activities, emotions, scenes and logos in
a streaming video for placement of context-relevant ads. Through Mirrors, we
have helped some of the largest brands in world in achieving unprecedented
reach and user engagement.
Our new brand identity helps us in effectively
bringing into light our three inherent characteristics – creator, explorer and
jester.
As a creator, we love to focus on
innovation and quality. We always want to contribute to society by bringing
something new into being, i.e. by realizing a vision. We draw deep satisfaction
from our efforts of creating something new that did not previously exist but has
the potential to revolutionize the industry. Our in-video contextual
advertising platform based on artificial intelligence (AI) and computer vision
is a product of our creator mind and is ushering a new era in ad tech industry.
Our explorer characteristic is exhibited
in our desire and efforts to do groundbreaking and pioneering work. We want to
have an explorer’s attitude towards the work we do and the way we do it. We
don’t want to take the conventional, pre-defined path, but want to pave our own
path and discover our own way of doing things so that we can bring ingenious
products in the market. We want to be free from constraints, feel the freedom
to explore the technology in our own way, and enjoy our discoveries and innovations.
Our explorer trait makes us utilize our capacities to the fullest, thereby
allowing us to push the boundaries.
![]() |
Computer Vision Applications |
With this new company branding, we have
now moved beyond our legacy. We have always been a first mover in problems we
have solved before, be it disrupting cross-device tracking or effective push
notifications. We are now completely focused on transforming how advertisers
reach their customers contextually with our unique offerings, and our new brand
identity reflects this. Our tryst with AI and emerging technologies will continue
and we will be launching new line of innovative products for the advertising
industry in the future.
Subscribe to:
Posts (Atom)