Human intuition and thought processes are going to be far more common in machines as they have the potential to quickly outpace basic artificial intelligence.
Since its start in the 1950s, artificial intelligence has undergone radical evolution, and this trend shows no indications of abating. The past several generations have just touched the surface.
Let’s bring the definitions here:
First Generation AI (Symbolic AI)
This phase involved rule-based systems and expert systems that relied on explicit programming to perform specific tasks. It excelled in rule-based reasoning but struggled with handling uncertainties and adapting to new information.
Second Generation AI (Machine Learning)
This era marked the rise of machine learning techniques, particularly supervised learning, where models learn from data patterns to make predictions or classifications. This includes techniques like support vector machines, decision trees, and early neural networks.
Third Generation AI (Deep Learning)
Deep learning represents a subset of machine learning where neural networks with multiple layers (deep neural networks) are used to model complex patterns. DL models can automatically learn features from raw data, eliminating the need for explicit feature engineering. This has led to significant advancements in image and speech recognition, natural language processing, and other tasks. Deep learning has been a driving force behind recent AI breakthroughs.
Fourth Generation AI (#AI-4) – towards the Artificial Intuition
The Fourth Generation of Artificial Intelligence (AI-4) represents the next phase in the evolution of AI, aiming to address the limitations of existing approaches and achieve more advanced and human-like intelligence. AI-4 is characterised by several key features:
- Contextual Understanding: AI-4 aims to improve AI systems’ capacity for comprehension and reasoning in intricate, dynamic, and unpredictable settings. In order to provide AI systems the ability to adapt and make wise judgments outside of their training data, it attempts to include contextual information, past knowledge, and common sense reasoning.
- Explainability and Transparency: The creation of transparent and interpretable AI systems is emphasised in AI-4. It attempts to give clear insights into the decision-making process used by AI models so that people may comprehend the underlying logic and develop confidence. Explainability is essential for important applications where accountability and openness are fundamental, including security, healthcare, and finance.
- Cognitive Capabilities: AI-4 attempts to include cognitive functions in AI systems, including perception, learning, memory, and attention. AI-4 aims to create systems that can learn and reason like people by taking cues from human cognition, which will result in more sophisticated and adaptable machines.
- Generalisation and Transfer Learning: The goal of AI-4 is to enhance AI systems’ capacity to learn from sparsely labelled data and to generalise knowledge across domains. Transfer learning approaches minimise the requirement for large amounts of training data by enabling models trained on one task or domain to adapt and transfer their knowledge to new, related tasks or domains.
Artificial Intuition
Artificial intuition indicates the point at which #AI will unquestionably surpass its current level of intelligence.
Despite its numerous benefits, the third generation of predictive analytics still relies solely on historical data. However, autonomously thinking robots in novel scenarios are necessary for the development of real artificial intelligence.
The industry needs AI that can be preemptive and emulate human intuition, in other words, AI that can do more than just analyse the data it is shown. It must be able to communicate a “gut feeling” when something is not right, something is #unusual.
Artificial intuition, the fourth age of AI, enables computers to identify possibilities and risks without being told what to look for. Although artificial intuition was thought to be unfeasible a few years ago, organisations are currently trying to develop solutions, and some have even succeeded in operationalizing it.
Unusual Behaviour Recognition
An increasing number of self-contained devices are emerging that have remarkable similarities to the subconscious region of the human brain, since they can learn and train themselves.
Put otherwise, algorithms are employed to simulate the analytic portion of the brain; instead, they simulate the most significant, potent, and fascinating portion of the human brain, which we refer to as common sense, instinct, and intuition.
Over time, the capacity of organisations to recognise and identify their clients has grown more complex. The development of automation-based systems and the creation of rules have become extremely difficult when client behaviour has radically altered.
Organisations require a high degree of artificial intelligence and intuition to identify and stop criminals, dangers, and mitigate the risks. Artificial intuition swiftly discerns the persuasive factors and delivers them to specialists through the use of complex mathematical algorithms.
Artificial intuition is simply another tool to help people do their work more effectively; it is not meant to take the place of human instinct in any manner. Artificial intuition only provides an analyst with what it perceives to be illegal conduct; it does not independently make any conclusions. Reviewing and validating the machine’s suspicions is still the operator’s responsibility (to a priori-defined level).
Algorithms have historically been associated with neural networks and machine learning, but an increasing number of autonomous machines are being developed that can learn and prepare themselves in a way that is strikingly comparable to that of the human mind.
Detecting unusual behavior through impartial unsupervised training of the neural network system directly from the camera stream offers significant advantages, providing a customised solution tailored to the end-user’s requirements.
Final Takeaways
These unsupervised machine algorithms can gather enormous amounts of data, and make conclusions that are comparable to those made by humans, all without the need for humans to mentor and train them. A world where computers can become even more intelligent than people is upon us!
Choose wisely, #iSentry platform incorporates a 4th generation of AI in #videoanalytics.