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How we used RetinaNet for dense shape detection in live imagery

Convolutional Neural Networks (CNN) have come a long way in conveniently identifying objects in images and videos. Networks like VGG19, ResNet, YOLO, SSD, R-CNN, DensepathNet, DualNet, Xception, Inception, PolyNet, MobileNet, and many more have evolved over time. Their range of applications lies in detecting space availability in a parking lot, satellite image analysis to track ships and agricultural output, radiology, people count, detecting words in vehicle license plates and storefronts, circuits/machinery fault analysis, medical diagnosis, etc.

Facebook AI Research (FAIR) has recently published RetinaNet architecture which uses Feature Pyramid Network (FPN) with ResNet. This architecture demonstrates higher accuracy in situations where speed is not really important. RetinaNet is built on top of FPN using ResNet.

Comparing tradeoff between speed and accuracy of different CNNs

Google offers benchmark comparison to calculate tradeoff between speed and accuracy of various networks using MS COCO dataset to train the models in TensorFlow. It gives us a benchmark to understand the best model that provides a balance between speed and accuracy. According to researchers, Faster R-CNN is more accurate, whereas R-FCN and FCN show better inference time (i.e. their speed is higher). Inception and ResNet are implementations of Faster R-CNN. MobileNet is an implementation of SSD.

Faster R-CNN implementations show an overall mAP (mean average precision) of around 30, which is highest for feature extraction. And, at the same time, its accuracy is also highest at around 80.5%. MobileNet R-FCN implementation has a lower mAP of around 15. Therefore, its accuracy drops down to about 71.5%. 

Thus, we can say — SSD implementations work best for detecting larger objects whereas, Faster R-CNN and R-FCN are better at detecting small objects.

speed and accuracy of various CNNs

On the COCO dataset, Faster R-CNN has average mAP for IoU (intersection-over-union) from 0.5 to 0.95 (mAP@[0.5, 0.95]) as 21.9% . R-FCN has mAP of 31.5% . SSD300 and SSD512 have mAPs of 23.2 and 26.8 respectively . YOLO-V2 is at 21.6% whereas YOLO-V3 is at 33% . FPN delivers 33.9% . RetinaNet stands highest at 40.8%.

RetinaNet- AP vs speed comparison
The two variations of RetinaNet are compared above for AP vs speed (ms) for inference.

One-stage detector vs two-stage detectors for shape detection

A One-stage detector scans for candidate objects sampled for around 100000 locations in the image that densely covers the spatial extent. This does not let the class balance between background and foreground. 

A Two-stage detector first narrows down the number of candidate objects on up to 2000 locations and separates them from the background in the first stage. It then classifies each candidate object in the second stage, thus managing the class balance. But, because of the smaller number of locations in the sample, many objects might escape detection. 

Faster R-CNN is an implementation of the two-stage detector. RetinaNet, an implementation of one stage detector addresses this class imbalance and efficiently detects all objects.

Focal Loss: a new loss function

This function focuses on training on hard negatives. It is defined as-

focal loss function

Where,

focal loss function

and p = sigmoid output score.

The greeks are hyperparameters.


When a sample classification is inappropriate and pₜ is small, it does not affect the loss. Gamma is a focusing parameter and adjusts the rate at which the easy samples are down-weighted. Samples get down-weighted when their classification is inappropriate and pₜ is close to 1. When gamma is 0, the focal loss is close to the cross-entropy loss. Upon increasing gamma, the effect of modulating factor also increases.

RetinaNet Backbone

The new loss function called Focal loss increases the accuracy significantly. Essentially it is a one-stage detector Feature Pyramid Network with Focal loss replacing the cross-entropy loss. 

Hard negative mining in a single shot detector and Faster R-CNN addresses the class imbalance by downsampling the dominant samples. On the contrary, RetinaNet addresses it by changing the weights in the loss function. The following diagram explains the architecture.

RetinaNet architecture

Here, deep feature extraction uses ResNet. Using FPN on top of ResNet further helps in constructing a multi-scale feature pyramid from a single resolution image. FPN is fast to compute and works efficiently on multiscale.

Results

We used ResNet50-FPN pre-trained on MS COCO to identify humans in the photo. The threshold is set above a score of 0.5. The following images show the result with markings and confidence values.

Dense shape detection
Human shape detection

We further tried to detect other objects like chairs.

RetinaNet object detection

Conclusion: It’s great to know that training on the COCO dataset can detect objects from unknown scenes. The object detection in the scenes took 5-7 seconds. So far, we have put filters of human or chair in results. RetinaNet can detect all the identifiable objects in the scene.

Multiple objects detection using RetinaNet

The different objects detected with their score are listed below-

human0.74903154
human0.7123633
laptop0.69287986
human0.68936586
bottle0.67716646
human0.66410005
human0.5968385
chair0.5855772
human0.5802317
bottle0.5792091
chair0.5783555
chair0.538948
human0.52267283

Next, we will be interested in working on a model good in detecting objects in the larger depth of the image, which the current ResNet50-FPN could not do.

About author: Harsh Vardhan is a Tech Lead in the Development Department of Mantra Labs. He is integral to AI-based development and deployment of projects at Mantra Labs.

General FAQs

What is RetinaNet?

RetinaNet is a type of CNN (Convolutional Neural Network) architecture published by Facebook AI Research also known as FAIR. It uses the Feature Pyramid Network (FPN) with ResNet. RetinaNet is widely used for detecting objects in live imagery (real-time monitoring systems). This architecture demonstrates a high-level of accuracy, but with a little compromise in speed. In the experiment we conducted, it took 5-7 seconds for object detection in live scenes.Dense shape detection - RetinaNet

What is RetinaNet Model?

RetinaNet model comprises of a backbone network and two task-specific sub-networks. The backbone network is a Feature Pyramid Network (FPN) built on ResNet. It is responsible for computing a convolution feature (object) from the input imagery. The two subnetworks are responsible for the classification and box regression, i.e. one subnet predicts the possibility of the object being present at a particular spatial location and the other subnetwork outputs the object location for the anchor box.

What is Focal Loss?

The focal loss function focuses on training on hard negatives. In other words, the focal loss function is an algorithm for improving Average Precision (AP) in single-stage object detectors. It is defined as-RetinaNet focal loss function

What is SSD Network?

Single Shot Detector (SSD) can detect multiple objects in an image in a single shot, hence the name. 
The beauty of SSD networks is that it predicts the boundaries itself and has no assigned region proposal network. SSD networks can predict the boundary boxes and classes from feature maps in just one pass by using small convolutional filters.

Glossary of Terms related to convolutional neural networks

CNN

Deep Learning uses Convolutional neural networks (CNN) for analyzing visual imagery. It consists of an input and output layer and multiple intermediate layers. In CNN programming, the input is called a tensor, which is usually an image or a video frame. It passes through the convolutional layer forming an abstract feature map identifying different shapes.

R-CNN

The process of combining region proposals with CNN is called as R-CNN. Region proposals are the smaller parts of the original image that have a probability of containing the desired shape/object. The R-CNN algorithm creates several region proposals and each of them goes to the CNN network for better dense shape detection.

ResNet

Residual Neural Network (ResNet) utilizes skip connections to jump over some layers. Classical CNNs do not perform when the depth of the network increases beyond a certain threshold. Most of the ResNet models are implemented with double or triple layer skips with batch normalization in between. ResNet helps in the training of deeper networks.

YOLO

You only look once (YOLO) is a real-time object detection system. It is faster than most other neural networks for detecting shapes and objects. Unlike other systems, it applies neural network functions to the entire image, optimizing the detection performance.

FAIR

It is Facebook’s AI Research arm for understanding the nature of intelligence and creating intelligent machines. The main research areas at FAIR include Computer Vision, Conversational AI, Integrity, Natural Language Processing, Ranking and Recommendations, System Research, Theory, Speech & Audio, and Human & Machine Intelligence.

FPN

Feature Pyramid Network (FPN) is a feature extractor designed for achieving speed and accuracy in detecting objects or shapes. It generates multiple feature map layers with better quality information for object detection.

COCO Dataset

Common Objects in Context (COCO) is a large-scale dataset for detecting, segmenting, and captioning any object. 

FCN

Fully Convolutional Network (FCN) transforms the height and width of the intermediate layer (feature map) back to the original size so that predictions have a one-to-one correspondence with the input image. 

R-FCN

R-FCN corresponds to a region-based fully convolutional network. It is mainly used for feature detection. R-FCN comprises region-based feature maps that are independent of region proposals (ROI) and carry computation outside of ROIs. It is much simpler and about 20 times faster than R-CNN. 

TensorFlow

It is an open-source software library developed by Google Brain for a range of dataflow and differential programming applications. It is also useful in neural network programming. 

Also read – How are Medical Images shared among Healthcare Enterprises



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The Human Touch in a Digital World: Why Personalization is Key to a Winning CX Strategy in the US

Welcome to a world of customer experience evolution where technology and humans sync fluidly, to create harmonized personalized interactions. In the throbbing epicenter of the US innovation realm, the quest for customized experiences is the pivotally driving force. Come along on the expedition through CX, as we unveil the mystery of how we can make the connection between the digital era and hearts and minds. The United States is recognized as one of the most dynamic markets in the world. Thus, this is an opportunity for businesses to decipher what consumers are looking for and how they can use personalization to gain a competitive advantage in a highly competitive space.

The Evolution of Customer Expectations

customer experience

As technology continues to advance at a rapid pace, customer expectations are evolving accordingly. According to a recent report by Epsilon, 80% of US consumers are more likely to make a purchase when brands offer personalized experiences. This indicates a clear shift in consumer behavior towards expecting tailored interactions that cater to their individual needs and preferences.

Strategizing Amid Digital Evolution

While digitalization revolutionizes business operations and customer interactions, it also poses a nuanced challenge. Companies leveraging automation and AI must balance efficiency gains with maintaining the human touch crucial for meaningful customer connections.

  • Loss of Human Touch: The reliance on automation and AI may lead to a depersonalized customer experience, where interactions feel scripted and devoid of genuine empathy.
  • Customer Disconnect: In the pursuit of efficiency, businesses may inadvertently overlook the individual needs and preferences of their customers, resulting in a disconnect between the brand and its audience.
  • Risk of Alienation: Failing to strike the right balance between technology and humanity can alienate customers, leading to decreased loyalty and trust in the brand.

Balancing technological innovation with a human-centric approach is essential to avoid alienating customers in this rapidly evolving digital landscape.

Understanding the US Market Dynamics

The US market is known for its diversity, both in terms of demographics and consumer preferences. What resonates with one segment of the population may not necessarily appeal to another. Therefore, a one-size-fits-all approach to CX is no longer viable. According to research by Forrester, 77% of US consumers have chosen, recommended, or paid more for a brand that provides a personalized service or experience. Businesses operating in the US must adopt a nuanced understanding of their target audience and tailor their CX strategies accordingly to foster genuine connections.

The Power of Personalization

Personalization empowers businesses to cut through the noise of mass marketing and deliver relevant, timely experiences that resonate with individual customers. By leveraging data analytics and AI technologies, companies can gain deeper insights into customer behavior and preferences, allowing them to anticipate needs and personalize interactions at every touchpoint. According to a survey conducted by Accenture, 91% of US consumers are more likely to shop with brands that recognize, remember, and provide relevant offers and recommendations.

Companies like Netflix and Amazon are way ahead when it comes to offering personalized cx to their consumers. They are constantly capturing the user behavior to understand their customer’s intent and interests and recommending the products based on the data. To meet today’s customer expectations, insurance, and healthcare firms are also leaving no stone unturned. 

  • We worked with an insurance arm of India’s largest public sector bank- SBI General Insurance to harness the power of personalization, tailoring every interaction to the unique needs and preferences of each individual customer. 
  • We partnered with Manipal Hospitals to create a personalized experience not just for the patients but also for clinic staff and doctors by developing a comprehensive suite of hospital management systems. 

Building Trust and Loyalty

In an era plagued by data privacy concerns and information overload, earning and maintaining customer trust is paramount. Personalized experiences demonstrate that businesses value their customers as individuals rather than mere transactions. This, in turn, fosters loyalty and encourages repeat business, driving long-term success and sustainable growth. According to Salesforce, 52% of US consumers are likely to switch brands if a company doesn’t personalize communications to them. (Click here to explore this blog and delve deeper into how CX innovation fosters trust and cultivates loyalty.)

Overcoming Challenges

Navigating the path to personalized customer experiences is fraught with challenges, but with proactive strategies and innovative approaches, businesses can overcome these hurdles. Here are some key tactics to surmount the obstacles:

  • Data Governance and Compliance: Implement robust data governance frameworks to ensure compliance with evolving privacy regulations such as GDPR and CCPA.
  • Integration of Technology: Invest in integrated platforms and tools that enable seamless collection, analysis, and utilization of customer data across various touchpoints.
  • Customer Consent and Transparency: Prioritize transparency and seek explicit consent from customers regarding data usage, fostering trust and accountability.
  • Dynamic Personalization Models: Develop agile personalization models that adapt to evolving customer preferences and behaviors in real-time.
  • Employee Training and Empowerment: Provide comprehensive training programs to equip employees with the skills and knowledge necessary to deliver personalized experiences effectively.

By addressing these challenges head-on and embracing a culture of innovation and adaptability, businesses can unlock the full potential of personalized CX and differentiate themselves in a competitive market landscape.

Conclusion

In conclusion, the human touch remains indispensable in a digital world, especially when it comes to CX in the US. By prioritizing personalization and striking the right balance between digital innovation and human connection, businesses can differentiate themselves in a competitive landscape, build lasting relationships with customers, and drive sustainable growth in the long run. Embracing the power of personalization isn’t just a strategy; it’s a commitment to putting customers at the heart of everything you do. 

Ready to enhance your CX strategy? Contact us now to explore innovative solutions tailored to your business needs.

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