Tuesday, July 28, 2020

COVID-19 and its impact on the Agri Economy of Punjab

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Syed Ahmed Uzair

Article Title

COVID-19 and its impact on the Agri Economy of Punjab

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Global Views 360

Publication Date

July 28, 2020

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Women planting paddy seedlings in agricultural field

Women planting paddy seedlings in agricultural field | Source: Diganta Talukdar via Wikimedia

The COVID-19 pandemic has hit the agricultural economy of the Indian state of Punjab really hard. Punjab’s paddy farmers have traditionally relied on migrant agricultural labourers who are mostly natives of the state of Bihar and Uttar Pradesh. Due to the pandemic, a large number of migrant labourers have returned to their native place causing a massive shortage of farm workers in Punjab.

Its impact became more severe as the paddy transplantation period was already around. Gurbachan Singh, a local paddy farmer told news agency ANI, "There is a shortage of labourers as the government sent back the migrant workers without proper planning."

The shortage of migrant workers forced the farmers to rely more on the local labourers. The local labourers used this opportunity to demand more wages which has resulted in almost doubling the labour cost. The migrant labourers used to charge around ₹2500 per acre for sowing paddy while the local ones were demanding ₹4000 per acre for the same work.

The  village panchayat (Local village council) tried to fix the labour charges of ₹3,000 per acre which did not go down well with local labourers. This caused a dispute which even resulted in a clash between labourers and farmers where the shots were fired as well.

The labour shortage does not appear to be ending soon as most migrant labourers are not willing to come back. Viresh Kumar, a labour contractor from Sonbarsa in Bihar’s Sitamarhi district who supplies workers to paddy farmers in Phagwara, told ThePrint, “Workers from Bihar and UP either don’t want to come back to fields in Punjab or they want farmers or us to bear the cost of bringing them back, which is a very expensive and complex procedure now. Due to the lack of sufficient number of regular trains, the cost of bringing a single migrant to Punjab is around Rs 3,000 to Rs 4,000 per person.”

The shortage of cheap labour has forced the local farmers to start looking for some alternative which could maintain the economic feasibility of farming.also provided some benefit

Agricultural Secretary of Punjab government, KS Pannu noted that some of the farmers have started employing new technology to cope up with the labour shortage. "Farmers have sown paddy at around 5 lakh hectare land with Direct Seeding of Rice technology this year. Some farmers, however, shifted back to the puddling method for cultivation as they could not adapt to the technology," Pannu told ANI.

Manpreet Ayali, a member of Punjab State Legislative Assembly, and a wealthy farmer, says that this labour shortage is a blessing in disguise for the farmers as it would make them more self-reliant, rather than depending on labour for the transplantation season.

The shortage of cheap migrant labour has forced many farmers to cut down the area of paddy cultivation. Experts believe that due to the reduced area of transplantation the groundwater levels might improve in the state which tops the country in over-exploitation of groundwater reserves.

It is still too early to give a definite verdict on the long term impact of the COVID-19 on the agricultural economy of Punjab, but in the short term it is nothing short of a disaster for the local farmers.

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February 4, 2021 5:22 PM

Automated Facial Recognition System of India and its Implications

On 28th of June 2019, the National Crime Records Bureau (NCRB) opened bids and invited Turnkey Solution providers to implement a centralized Automated Facial Recognition System, or AFRS, in India. As the name suggests, AFRS is a facial recognition system which was proposed by the Indian Ministry of Home Affairs, geared towards modernizing the police force and to identify and track criminals using Facial Recognition Technology, or FRT.

The aforementioned technology uses databases of photos collected from criminal records, CCTV cameras, newspapers and media, driver’s license and government identities to collect facial data of people. FRT then identifies the people and uses their biometrics to map facial features and geometry of the face. The software then creates a “facial signature” based on the information collected. A mathematical formula is associated with each facial signature and it is subsequently compared to a database of known faces.

This article explores the implications of implementing Automated Facial Recognition technology in India.

Facial recognition software has become widely popular in the past decade. Several countries have been trying to establish efficient Facial Recognition systems for tackling crime and assembling an efficient criminal tracking system. Although there are a few potential benefits of using the technology, those benefits seem to be insignificant when compared to the several concerns about privacy and safety of people that the technology poses.

Images of every person captured by CCTV cameras and other sources will be regarded as images of potential criminals and will be matched against the Crime and Criminal Tracking Networks and Systems database (CCTNS) by the FRT. This implies that all of us will be treated as potential criminals when we walk past a CCTV camera. As a consequence, the assumption of “innocent until proven guilty” will be turned on its head.

You wouldn’t be surprised to know that China has installed the largest centralized FRT system in the world. In China, data can be collected and analyzed from over 200 million CCTVs that the country owns. Additionally, there are 20 million specialized facial recognition cameras which continuously collect data for analysis. These systems are currently used by China to track and manipulate the behavior of ethnic Uyghur minorities in the camps set up in Xinjiang region. FRT was also used by China during democracy protests of Hong Kong to profile protestors to identify them. These steps raised concerns worldwide about putting an end to a person’s freedom of expression, right to privacy and basic dignity.

It is very likely that the same consequences will be faced by Indians if AFRS is established across the country.

There are several underlying concerns about implementing AFRS.

Firstly, this system has proven to be inefficient in several instances. In August 2018, Delhi police used a facial recognition system which was reported to have an accuracy rate of 2%. The FRT software used by the UK's Metropolitan Police returned more than a staggering 98% of false positives. Another instance was when American Civil Liberties Union (ACLU) used Amazon’s face recognition software known as “Rekognition” to compare the images of the legislative members of American Congress with a database of criminal mugshots. To Amazon’s embarrassment, the results included 28 incorrect matches.. Another significant evidence of inefficiency was the outcome of an experiment performed by McAfee.  Here is what they did. The researchers used an algorithm known as CycleGAN which is used for image translation. CycleGAN is a software expert at morphing photographs. One can use the software to change horses into zebras and paintings into photographs. McAfee used the software to misdirect the Facial recognition algorithm. The team used 1500 photos of two members and fed them into CycleGAN which morphed them into one another and kept feeding the resulting images into different facial recognition algorithms to check who it recognized. After generating hundreds of such images, CycleGAN eventually generated a fake image which looked like person ‘A’ to the naked eye but managed to trick the FRT into thinking that it was person ‘B’. Owing to the dissatisfactory results, researchers expressed their concern about the inefficiency of FRTs. In fact mere eye-makeup can fool the FRT into allowing a person on a no-flight list to board the flight. This trend of inefficiency in the technology was noticed worldwide.

Secondly, facial recognition systems use machine learning technology. It is concerning and uncomfortable to note that FRT has often reflected the biases deployed in the society. Consequently, leading to several facial mismatches. A study by MIT shows that FRT routinely misidentifies people of color, women and young people. While the error rate was 8.1% for men, it was 20.6% for women. The error for women of color was 34%. The error values in the “supervised study” in a laboratory setting for a sample population is itself simply unacceptable. In the abovementioned American Civil Liberties Union study, the false matches were disproportionately African American and people of color. In India, 55% of prisoners undertrial are either Dalits, Adivasis, or Muslims although the combined population of all three just amounts to 39% of the total population (2011 census). If AFRS is trained on these records, it would definitely deploy the same socially held prejudices against the minority communities. Therefore, displaying inaccurate matches. The tender issued by the Ministry of Home Affairs had no indication of eliminating these biases nor did it have any mention of human-verifiable results. Using a system embedded with societal bias to replace biased human judgement defeats claims of technological neutrality. Deploying FRT systems in law enforcement will be ineffective at best and disastrous at worst.

Thirdly, the concerns of invasion of privacy and mass surveillance hasn’t been addressed satisfactorily. Facial Recognition makes data protection almost impossible as publicly available information is collected but they are analyzed to a point of intimacy. India does not have a well established data protection law given that “Personal data Protection Bill” is yet to be enforced. Implementing AFRS in the absence of a safeguard is a potential threat to our personal data. Moreover, police and other law enforcement agencies will have a great degree of discretion over our data which can lead to a mission creep. To add on to the list of privacy concerns, the bidder of AFRS will be largely responsible for maintaining confidentiality and integrity of data which will be stored apart from the established ISO standard. Additionally, the tender has no preference to “Make in India'' and shows absolutely no objections to foreign bidders and even to those having their headquarters in China, the hub of data breach .The is no governing system or legal limitations and restrictions to the technology. There is no legal standard set to ensure proportional use and protection to those who non-consensually interact with the system. Furthermore, the tender does not mention the definition of a “criminal”. Is a person considered a criminal when a charge sheet is filed against them? Or is it when the person is arrested? Or is it an individual convicted by the Court? Or is it any person who is a suspect? Since the word “criminal” isn’t definitely defined in the tender, the law enforcement agencies will ultimately be able to track a larger number of people than required.

The notion that AFRS will lead to greater efficacy must be critically questioned. San Francisco imposed a total ban on police use of facial recognition in May, 2019. Police departments in London are pressurized to put a stop to the use of FRT after several instances of discrimination and inefficiency. It would do well to India to learn from the mistakes of other countries rather than committing the same.

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